I have some code which fits several (cross-validated) models to some data, as below.
library(datasets) library(caret) library(caretEnsemble) # load data data("iris") # establish cross-validation structure set.seed(32) trainControl <- trainControl(method="repeatedcv", number=5, repeats=3, # 3x 5-fold CV search="random") algorithmList <- c('lda', # Linear Discriminant Analysis 'rpart' , # Classification and Regression Trees 'svmRadial') # SVM with RBF Kernel # cross-validate models from algorithmList models <- caretList(Species~., data=iris, trControl=trainControl, methodList=algorithmList)
so far so good. however, if I add
'gbm' to my
algorithmList, I get a ton of extraneous log messages because
gbm seems to have a
verbose=TRUE default fit param.
According to the caret docs, if I were running
method='gbm' by itself (not along with several models trained in a
caretList), I could simply add
train(), which would flow through to
gbm. But this throws an error when I try it in
So I would like to pass
verbose=FALSE (or any other fit param, in theory) specifically to one particular model from
methodList. How can I accomplish this?