| spark.fmClassifier {SparkR} | R Documentation | 
spark.fmClassifier fits a factorization classification model against a SparkDataFrame.
Users can call summary to print a summary of the fitted model, predict to make
predictions on new data, and write.ml/read.ml to save/load fitted models.
Only categorical data is supported.
spark.fmClassifier(data, formula, ...)
## S4 method for signature 'SparkDataFrame,formula'
spark.fmClassifier(
  data,
  formula,
  factorSize = 8,
  fitLinear = TRUE,
  regParam = 0,
  miniBatchFraction = 1,
  initStd = 0.01,
  maxIter = 100,
  stepSize = 1,
  tol = 1e-06,
  solver = c("adamW", "gd"),
  thresholds = NULL,
  seed = NULL,
  handleInvalid = c("error", "keep", "skip")
)
## S4 method for signature 'FMClassificationModel'
summary(object)
## S4 method for signature 'FMClassificationModel'
predict(object, newData)
## S4 method for signature 'FMClassificationModel,character'
write.ml(object, path, overwrite = FALSE)
| data | a  | 
| formula | a symbolic description of the model to be fitted. Currently only a few formula operators are supported, including '~', '.', ':', '+', and '-'. | 
| ... | additional arguments passed to the method. | 
| factorSize | dimensionality of the factors. | 
| fitLinear | whether to fit linear term. # TODO Can we express this with formula? | 
| regParam | the regularization parameter. | 
| miniBatchFraction | the mini-batch fraction parameter. | 
| initStd | the standard deviation of initial coefficients. | 
| maxIter | maximum iteration number. | 
| stepSize | stepSize parameter. | 
| tol | convergence tolerance of iterations. | 
| solver | solver parameter, supported options: "gd" (minibatch gradient descent) or "adamW". | 
| thresholds | in binary classification, in range [0, 1]. If the estimated probability of class label 1 is > threshold, then predict 1, else 0. A high threshold encourages the model to predict 0 more often; a low threshold encourages the model to predict 1 more often. Note: Setting this with threshold p is equivalent to setting thresholds c(1-p, p). | 
| seed | seed parameter for weights initialization. | 
| handleInvalid | How to handle invalid data (unseen labels or NULL values) in features and label column of string type. Supported options: "skip" (filter out rows with invalid data), "error" (throw an error), "keep" (put invalid data in a special additional bucket, at index numLabels). Default is "error". | 
| object | a FM Classification model fitted by  | 
| newData | a SparkDataFrame for testing. | 
| path | The directory where the model is saved. | 
| overwrite | Overwrites or not if the output path already exists. Default is FALSE which means throw exception if the output path exists. | 
spark.fmClassifier returns a fitted Factorization Machines Classification Model.
summary returns summary information of the fitted model, which is a list.
predict returns the predicted values based on a FM Classification model.
spark.fmClassifier since 3.1.0
summary(FMClassificationModel) since 3.1.0
predict(FMClassificationModel) since 3.1.0
write.ml(FMClassificationModel, character) since 3.1.0
## Not run: 
##D df <- read.df("data/mllib/sample_binary_classification_data.txt", source = "libsvm")
##D 
##D # fit Factorization Machines Classification Model
##D model <- spark.fmClassifier(
##D            df, label ~ features,
##D            regParam = 0.01, maxIter = 10, fitLinear = TRUE
##D          )
##D 
##D # get the summary of the model
##D summary(model)
##D 
##D # make predictions
##D predictions <- predict(model, df)
##D 
##D # save and load the model
##D path <- "path/to/model"
##D write.ml(model, path)
##D savedModel <- read.ml(path)
##D summary(savedModel)
## End(Not run)