I would like to be able to use a sparse matrix as x in caret::train and it looks like many of them expect a data frame. I've been able to use sparse matrix with XGboost with caret but nnet and ELM both seem to require a data frame. I noticed in the code, caret tries to convert x to data frame for nnet and ELM models.

Is there a list of models that support sparse matrix?


You can use this piece of code to find which models are using as.matrix in the fit function.

Beware that as.matrix turns a sparse matrix into a full blown matrix. You might run into memory issues. I have not tested if the individual underlying models accept a sparse matrix.

library(caret)  # run on version 6.0-71

model_list <- getModelInfo()
df <- data.frame(models = names(model_list), 
                 fit = rep("", length(model_list)), 
                 stringsAsFactors = FALSE)

for (i in 1:length(model_list)) {
  df$fit[i] <- as.expression(functionBody(model_list[[i]]$fit))

# find xgboost matrix   
df$models[grep("xgb.DMatrix", df$fit)]
[1] "xgbLinear" "xgbTree"  

# find all models where fit contains as.matrix(x)
df$models[grep("as.matrix\\(x\\)", df$fit)]

[1] "bdk"               "binda"             "blasso"            "blassoAveraged"    "bridge"            "brnn"             
[7] "dnn"               "dwdLinear"         "dwdPoly"           "dwdRadial"         "enet"              "enpls.fs"         
[13] "enpls"             "foba"              "gaussprLinear"     "gaussprPoly"       "gaussprRadial"     "glmnet"           
[19] "knn"               "lars"              "lars2"             "lasso"             "logicBag"          "LogitBoost"       
[25] "lssvmLinear"       "lssvmPoly"         "lssvmRadial"       "mlpSGD"            "nnls"              "ordinalNet"       
[31] "ORFlog"            "ORFpls"            "ORFridge"          "ORFsvm"            "ownn"              "PenalizedLDA"     
[37] "ppr"               "qrnn"              "randomGLM"         "relaxo"            "ridge"             "rocc"             
[43] "rqlasso"           "rqnc"              "rvmLinear"         "rvmPoly"           "rvmRadial"         "sda"              
[49] "sddaLDA"           "sddaQDA"           "sdwd"              "snn"               "spikeslab"         "svmLinear"        
[55] "svmLinear2"        "svmLinear3"        "svmLinearWeights"  "svmLinearWeights2" "svmPoly"           "svmRadial"        
[61] "svmRadialCost"     "svmRadialSigma"    "svmRadialWeights"  "xgbLinear"         "xgbTree"           "xyf"      
  • 1
    Thank you. This answers my question. But the use of as.matrix kind of defeats the purpose of using sparse matrix. – Fred R. Aug 21 '16 at 2:58

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.