Back to Multiple platform build/check report for BioC 3.21: simplified long |
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This page was generated on 2025-03-01 11:45 -0500 (Sat, 01 Mar 2025).
Hostname | OS | Arch (*) | R version | Installed pkgs |
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nebbiolo1 | Linux (Ubuntu 24.04.1 LTS) | x86_64 | R Under development (unstable) (2025-02-19 r87757) -- "Unsuffered Consequences" | 4708 |
palomino7 | Windows Server 2022 Datacenter | x64 | R Under development (unstable) (2025-01-21 r87610 ucrt) -- "Unsuffered Consequences" | 4495 |
lconway | macOS 12.7.1 Monterey | x86_64 | R Under development (unstable) (2025-01-22 r87618) -- "Unsuffered Consequences" | 4506 |
kjohnson3 | macOS 13.7.1 Ventura | arm64 | R Under development (unstable) (2025-01-20 r87609) -- "Unsuffered Consequences" | 4460 |
kunpeng2 | Linux (openEuler 24.03 LTS) | aarch64 | R Under development (unstable) (2025-02-19 r87757) -- "Unsuffered Consequences" | 4349 |
Click on any hostname to see more info about the system (e.g. compilers) (*) as reported by 'uname -p', except on Windows and Mac OS X |
Package 642/2302 | Hostname | OS / Arch | INSTALL | BUILD | CHECK | BUILD BIN | ||||||||
ELViS 0.99.11 (landing page) Jin-Young Lee
| nebbiolo1 | Linux (Ubuntu 24.04.1 LTS) / x86_64 | OK | OK | OK | ![]() | ||||||||
palomino7 | Windows Server 2022 Datacenter / x64 | OK | OK | OK | OK | ![]() | ||||||||
lconway | macOS 12.7.1 Monterey / x86_64 | OK | OK | OK | OK | ![]() | ||||||||
kjohnson3 | macOS 13.7.1 Ventura / arm64 | OK | OK | OK | OK | ![]() | ||||||||
kunpeng2 | Linux (openEuler 24.03 LTS) / aarch64 | OK | OK | OK | ||||||||||
To the developers/maintainers of the ELViS package: - Allow up to 24 hours (and sometimes 48 hours) for your latest push to git@git.bioconductor.org:packages/ELViS.git to reflect on this report. See Troubleshooting Build Report for more information. - Use the following Renviron settings to reproduce errors and warnings. - If 'R CMD check' started to fail recently on the Linux builder(s) over a missing dependency, add the missing dependency to 'Suggests:' in your DESCRIPTION file. See Renviron.bioc for more information. |
Package: ELViS |
Version: 0.99.11 |
Command: /Library/Frameworks/R.framework/Resources/bin/R CMD check --install=check:ELViS.install-out.txt --library=/Library/Frameworks/R.framework/Resources/library --no-vignettes --timings ELViS_0.99.11.tar.gz |
StartedAt: 2025-02-28 19:05:56 -0500 (Fri, 28 Feb 2025) |
EndedAt: 2025-02-28 19:08:42 -0500 (Fri, 28 Feb 2025) |
EllapsedTime: 166.0 seconds |
RetCode: 0 |
Status: OK |
CheckDir: ELViS.Rcheck |
Warnings: 0 |
############################################################################## ############################################################################## ### ### Running command: ### ### /Library/Frameworks/R.framework/Resources/bin/R CMD check --install=check:ELViS.install-out.txt --library=/Library/Frameworks/R.framework/Resources/library --no-vignettes --timings ELViS_0.99.11.tar.gz ### ############################################################################## ############################################################################## * using log directory ‘/Users/biocbuild/bbs-3.21-bioc/meat/ELViS.Rcheck’ * using R Under development (unstable) (2025-01-20 r87609) * using platform: aarch64-apple-darwin20 * R was compiled by Apple clang version 14.0.0 (clang-1400.0.29.202) GNU Fortran (GCC) 14.2.0 * running under: macOS Ventura 13.7.1 * using session charset: UTF-8 * using option ‘--no-vignettes’ * checking for file ‘ELViS/DESCRIPTION’ ... OK * this is package ‘ELViS’ version ‘0.99.11’ * package encoding: UTF-8 * checking package namespace information ... OK * checking package dependencies ... INFO Imports includes 21 non-default packages. Importing from so many packages makes the package vulnerable to any of them becoming unavailable. Move as many as possible to Suggests and use conditionally. * checking if this is a source package ... OK * checking if there is a namespace ... OK * checking for hidden files and directories ... OK * checking for portable file names ... OK * checking for sufficient/correct file permissions ... OK * checking whether package ‘ELViS’ can be installed ... OK * checking installed package size ... OK * checking package directory ... OK * checking ‘build’ directory ... OK * checking DESCRIPTION meta-information ... OK * checking top-level files ... OK * checking for left-over files ... OK * checking index information ... OK * checking package subdirectories ... OK * checking code files for non-ASCII characters ... OK * checking R files for syntax errors ... OK * checking whether the package can be loaded ... OK * checking whether the package can be loaded with stated dependencies ... OK * checking whether the package can be unloaded cleanly ... OK * checking whether the namespace can be loaded with stated dependencies ... OK * checking whether the namespace can be unloaded cleanly ... OK * checking whether startup messages can be suppressed ... OK * checking dependencies in R code ... OK * checking S3 generic/method consistency ... OK * checking replacement functions ... OK * checking foreign function calls ... OK * checking R code for possible problems ... OK * checking Rd files ... OK * checking Rd metadata ... OK * checking Rd cross-references ... OK * checking for missing documentation entries ... OK * checking for code/documentation mismatches ... OK * checking Rd \usage sections ... OK * checking Rd contents ... OK * checking for unstated dependencies in examples ... OK * checking contents of ‘data’ directory ... OK * checking data for non-ASCII characters ... OK * checking data for ASCII and uncompressed saves ... OK * checking files in ‘vignettes’ ... OK * checking examples ... OK Examples with CPU (user + system) or elapsed time > 5s user system elapsed run_ELViS 18.566 0.596 19.200 integrative_heatmap 15.467 0.564 16.105 * checking for unstated dependencies in ‘tests’ ... OK * checking tests ... Running ‘testthat.R’ OK * checking for unstated dependencies in vignettes ... OK * checking package vignettes ... OK * checking running R code from vignettes ... SKIPPED * checking re-building of vignette outputs ... SKIPPED * checking PDF version of manual ... OK * DONE Status: OK
ELViS.Rcheck/00install.out
############################################################################## ############################################################################## ### ### Running command: ### ### /Library/Frameworks/R.framework/Resources/bin/R CMD INSTALL ELViS ### ############################################################################## ############################################################################## * installing to library ‘/Library/Frameworks/R.framework/Versions/4.5-arm64/Resources/library’ * installing *source* package ‘ELViS’ ... ** this is package ‘ELViS’ version ‘0.99.11’ ** using staged installation ** R ** data ** inst ** byte-compile and prepare package for lazy loading ** help *** installing help indices ** building package indices ** installing vignettes ** testing if installed package can be loaded from temporary location ** testing if installed package can be loaded from final location ** testing if installed package keeps a record of temporary installation path * DONE (ELViS)
ELViS.Rcheck/tests/testthat.Rout
R Under development (unstable) (2025-01-20 r87609) -- "Unsuffered Consequences" Copyright (C) 2025 The R Foundation for Statistical Computing Platform: aarch64-apple-darwin20 R is free software and comes with ABSOLUTELY NO WARRANTY. You are welcome to redistribute it under certain conditions. Type 'license()' or 'licence()' for distribution details. R is a collaborative project with many contributors. Type 'contributors()' for more information and 'citation()' on how to cite R or R packages in publications. Type 'demo()' for some demos, 'help()' for on-line help, or 'help.start()' for an HTML browser interface to help. Type 'q()' to quit R. > # This file is part of the standard setup for testthat. > # It is recommended that you do not modify it. > # > # Where should you do additional test configuration? > # Learn more about the roles of various files in: > # * https://r-pkgs.org/testing-design.html#sec-tests-files-overview > # * https://testthat.r-lib.org/articles/special-files.html > > library(testthat) > library(ELViS) > > test_check("ELViS") ELViS run starts. 1 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 1| done 2 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 2| done 3 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 3| done 4 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 4| done 5 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 5| done 6 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 6| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 1| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 2| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 3| done 4| done 5| done 6| done 1 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 1| done 2 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 2| done 3 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 3| done 4 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 4| done 5 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 5| done 6 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 6| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 1| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 2| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 3| done 4| done 5| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 6| done Normalization done. ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() 1| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() 2| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 3| done 4| done 5| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 6| done 1 1 2 2 3 3 4 4 5 5 6 6 Segmentation done. ELViS run starts. 1 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 1| done 2 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 2| done 3 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 3| done 4 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 4| done 5 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 5| done 6 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 6| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 1| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 2| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 3| done 4| done 5| done 6| done 1 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 1| done 2 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 2| done 3 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 3| done 4 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 4| done 5 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 5| done 6 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 6| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 1| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 2| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 3| done 4| done 5| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 6| done Normalization done. ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() 1| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() 2| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 3| done 4| done 5| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 6| done 1 1 2 2 3 3 4 4 5 5 6 6 Segmentation done. 1 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 1| done 2 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 2| done 3 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 3| done 4 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 4| done 5 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 5| done 6 ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() 6| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 1| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 2| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() ! Argument ncluster was not provided. Selecting values with BIC ℹ BIC-selected number of class : ncluster = 2 BIC-selected number of segment : nseg = 2 3| done 4| done 5| done 6| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() 1| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() 2| done ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ✔ Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 3 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 3 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() ── Checking arguments ────────────────────────────────────────────────────────── ✔ Segmentation with seg.var = c("z", "y") ✔ Using lmin = 300 ✔ Using Kmax = 10 ✔ Using ncluster = 2L ✔ Using scale.variable = FALSE ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ✔ Using subsample_by = 60 ✔ subsampling by 60 ✔ Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 → After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale ! Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running Segmentation/Clustering algorithm ─────────────────────────────────── ℹ Running Segmentation/Clustering with lmin = 5, Kmax = 3 and ncluster = 2L → Calculating initial segmentation without clustering ✔ Initial segmentation with no cluster calculated. → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering ── Segmentation/Clustering with ncluster = 2 → Calculating initial segmentation without clustering → Calculating initial segmentation without clustering → Segmentation-Clustering for ncluster = 2 and nseg = 2/3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 ✔ Segmentation-Clustering successful for ncluster = 2 and nseg = 2:3 → Segmentation-Clustering for ncluster = 2 and nseg = 3/3 → Smoothing likelihood for ncluster = 2. This step can be lengthy. ✔ Smoothing successful for ncluster = 2 → Smoothing likelihood for ncluster = 2. This step can be lengthy. → Calculating initial segmentation without clustering ✔ Segmentation/Clustering with ncluster = 2 successfully calculated. BIC selected : nseg = 2 → Calculating initial segmentation without clustering ── Segmentation/Clustering results ───────────────────────────────────────────── ✔ Best segmentation/clustering estimated with 2 clusters and 2 segments according to BIC → Number of cluster should preferentially be selected according to biological knowledge. Exploring the BIC plot with plot_BIC() can also provide advice to select the number of clusters. → Once number of clusters is selected, the number of segment cab be selected according to BIC. → Results of the segmentation/clustering may further be explored with plot() and segmap() 3| done 4| done 5| done 6| done 1 1 2 2 3 3 4 4 5 5 6 6 -- Checking arguments ---------------------------------------------------------- v Segmentation with seg.var = c("z", "y") v Using lmin = 300 v Using Kmax = 10 v Using scale.variable = FALSE i Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("z", "y") i Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "z" -- Preparing and checking data ------------------------------------------------- -- Subsampling -- ! Subsampling automatically activated. To disable it, provide subsample = FALSE v Using subsample_by = 60 v subsampling by 60 v Adjusting lmin to subsampling. Dividing lmin by 60, with a minimum of 5 > After subsampling, lmin = 5. Corresponding to lmin = 300 on the original time scale v Adjusting Kmax so that lmin*Kmax < nrow(x). Kmax = 3 -- Scaling and final data check -- v No variable rescaling. To activate, use scale.variable = TRUE v Data have no repetition of nearly-identical values larger than lmin -- Running segmentation algorithm ---------------------------------------------- i Running segmentation with lmin = 5 and Kmax = 3 > Calculating cost matrix v Cost matrix calculated > Calculating cost matrix > Dynamic Programming v Optimal segmentation calculated for all number of segments <= 3 > Dynamic Programming > Calculating segment statistics v Best segmentation estimated with 2 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() n_cycle : 1 N_alt_ori n_cycle : 1 N_alt_ori The path to samtools not provided. Default samtools is used : /Users/biocbuild/Library/Caches/org.R-project.R/R/basilisk/1.19.1/ELViS/0.99.11/env_samtools/bin/samtools The path to samtools not provided. Default samtools is used : /Users/biocbuild/Library/Caches/org.R-project.R/R/basilisk/1.19.1/ELViS/0.99.11/env_samtools/bin/samtools The path to samtools not provided. Default samtools is used : /Users/biocbuild/Library/Caches/org.R-project.R/R/basilisk/1.19.1/ELViS/0.99.11/env_samtools/bin/samtools The path to samtools not provided. Default samtools is used : /Users/biocbuild/Library/Caches/org.R-project.R/R/basilisk/1.19.1/ELViS/0.99.11/env_samtools/bin/samtools The path to samtools not provided. Default samtools is used : /Users/biocbuild/Library/Caches/org.R-project.R/R/basilisk/1.19.1/ELViS/0.99.11/env_samtools/bin/samtools The path to samtools not provided. Default samtools is used : /Users/biocbuild/Library/Caches/org.R-project.R/R/basilisk/1.19.1/ELViS/0.99.11/env_samtools/bin/samtools ── Checking arguments ────────────────────────────────────────────────────────── ! Argument seg.var missing taking default value seg.var = c("x","y") ✔ Segmentation with seg.var = c("x", "y") ✔ Using lmin = 5 ✔ Using Kmax = 2 ! Argument scale.variable missing Taking default value scale.variable = FALSE for segmentation(). ℹ Argument diag.var was not provided Taking default seg.var as diagnostic variables diag.var. Setting diag.var = c("x", "y") ℹ Argument order.var was not provided Taking default diag.var[1] as ordering variable order.var. Setting order.var = "x" ── Preparing and checking data ───────────────────────────────────────────────── ── Subsampling ── ! Subsampling automatically activated. To disable it, provide subsample = FALSE ℹ Argument subsample_over was not provided Taking default value for segmentation() Setting subsample_over = 10000 ✔ nrow(x) < subsample_over, no subsample needed ── Scaling and final data check ── ✔ No variable rescaling. To activate, use scale.variable = TRUE ✔ Data have no repetition of nearly-identical values larger than lmin ── Running segmentation algorithm ────────────────────────────────────────────── ℹ Running segmentation with lmin = 5 and Kmax = 2 → Calculating cost matrix ✔ Cost matrix calculated → Calculating cost matrix → Dynamic Programming ✔ Optimal segmentation calculated for all number of segments <= 2 → Dynamic Programming → Calculating segment statistics ✔ Best segmentation estimated with 1 segments, according to Lavielle's criterium Other number of segments may be selected by looking for likelihood breaks with plot_likelihood() Results of the segmentation may be explored with plot() and segmap() [ FAIL 0 | WARN 0 | SKIP 0 | PASS 101 ] > > proc.time() user system elapsed 14.639 0.542 15.274
ELViS.Rcheck/ELViS-Ex.timings
name | user | system | elapsed | |
coord_to_grng | 0.025 | 0.001 | 0.026 | |
coord_to_lst | 0 | 0 | 0 | |
depth_hist | 0.307 | 0.010 | 0.319 | |
filt_samples | 0.067 | 0.004 | 0.073 | |
gene_cn_heatmaps | 4.034 | 0.086 | 4.177 | |
get_depth_matrix | 0.033 | 0.034 | 0.133 | |
get_new_baseline | 0.096 | 0.002 | 0.099 | |
integrative_heatmap | 15.467 | 0.564 | 16.105 | |
norm_fun | 0.000 | 0.001 | 0.000 | |
plot_pileUp_multisample | 0.709 | 0.035 | 0.749 | |
run_ELViS | 18.566 | 0.596 | 19.200 | |