| Title: | Exploratory Reduced Reparameterized Unified Model Estimation | 
| Version: | 0.0.4 | 
| Description: | Perform a Bayesian estimation of the exploratory reduced reparameterized unified model (ErRUM) described by Culpepper and Chen (2018) <doi:10.3102/1076998618791306>. | 
| License: | GPL-2 | GPL-3 [expanded from: GPL (≥ 2)] | 
| URL: | https://github.com/tmsalab/errum, https://tmsalab.github.io/errum/ | 
| BugReports: | https://github.com/tmsalab/errum/issues | 
| Depends: | R (≥ 4.3.0) | 
| Imports: | Rcpp (≥ 1.1.0) | 
| LinkingTo: | Rcpp, RcppArmadillo (≥ 15.0.2-2) | 
| Suggests: | simcdm | 
| RoxygenNote: | 7.3.3 | 
| Encoding: | UTF-8 | 
| Language: | en-US | 
| NeedsCompilation: | yes | 
| Packaged: | 2025-09-26 17:57:49 UTC; ronin | 
| Author: | James Joseph Balamuta
     | 
| Maintainer: | James Joseph Balamuta <balamut2@illinois.edu> | 
| Repository: | CRAN | 
| Date/Publication: | 2025-09-27 23:10:14 UTC | 
errum: Exploratory Reduced Reparameterized Unified Model Estimation
Description
Perform a Bayesian estimation of the exploratory reduced reparameterized unified model (ErRUM) described by Culpepper and Chen (2018) doi:10.3102/1076998618791306.
Author(s)
Maintainer: James Joseph Balamuta balamut2@illinois.edu (ORCID) [copyright holder]
Authors:
Steven Andrew Culpepper sculpepp@illinois.edu (ORCID) [copyright holder]
Jeffrey A. Douglas jeffdoug@illinois.edu
See Also
Useful links:
Report bugs at https://github.com/tmsalab/errum/issues
Exploratory reduced Reparameterized Unified Model (ErRUM)
Description
Obtains samples from posterior distribution for the Exploratory reduced Reparameterized Unified Model (ErRUM).
Usage
errum(
  y,
  k = 3,
  burnin = 1000,
  chain_length = 10000,
  verbose = FALSE,
  X = matrix(1, nrow = ncol(y)),
  v0 = 4,
  v1 = 2,
  cv0 = 0.1,
  cv1 = 10,
  bnu = 16
)
Arguments
y | 
 Binary responses to assessments in   | 
k | 
 Number of Attribute Levels as a positive   | 
burnin | 
 Number of Observations to discard on the chain.  | 
chain_length | 
 Length of the MCMC chain  | 
verbose | 
 Display estimation progress updates.  | 
X, v0, v1, cv0, cv1, bnu | 
 Additional tuning parameters  | 
Value
An errum object that has:
-  
PISTAR -  
RSTAR -  
PIs -  
QS -  
m_Delta -  
Delta_biject -  
M2 -  
M1 -  
NUS 
See Also
simcdm::attribute_bijection(),
simcdm::sim_rrum_items()
Examples
# Setup Simulation Parameters
N = 5
K = 3
J = 30
# Note:
# Sample size has been reduced to create a minimally
# viable example that can be run during CRAN's automatic check.
# Please make sure to have a larger sample size of around 3,000.
# Sample true attribute profiles
Z         = matrix(rnorm(N * K), N, K)
Sig       = matrix(.5, K, K)
diag(Sig) = 1
theta     = Z %*% chol(Sig)
thvals    = matrix(qnorm((1:K) / (K + 1)),
                   N, K, byrow = TRUE)
Alphas    = 1 * (theta > thvals)
# Defining matrix of possible attribute profiles
As = as.matrix(expand.grid(c(0, 1), c(0, 1), c(0, 1)))
Q = rbind(As[rep(c(2, 3, 5), 4),],
          As[rep(c(4, 6, 7), 4),],
          As[rep(8, 6),])
# Use simulation functions available in simcdm
if (requireNamespace("simcdm", quietly = TRUE)) {
a = As %*% simcdm::attribute_bijection(K)
As = As[a + 1,]
# Setting item parameters
pistar = rep(.9, J)
rstar = matrix(.6, J, K) * Q
# Simulate data under rRUM model
Y = simcdm::sim_rrum_items(Q, rstar, pistar, Alphas)
# Estimation Settings
chainLength = 10000  # Run with 20000
burnin = chainLength / 2
# Gibbs Estimation
model = errum(Y, K, burnin, chainLength)
}