Repeatedly using a formula interface for a data set with many predictors can be very slow. An example of this is cross-validating or bootstrapping over meta-parameters during classification.
Which classification packages in
R allow non-formula interfaces that allow you to enter the predictor matrix and response vector directly instead of via a formula interface?
train( x = train.x, y = train.y, ... )
train( y ~ ., data = cbind(y, x) )
? I am primarily using
caret. My list so far:
gbm cubist cforest
gbm is remotely reasonable in terms of speed for the data sets I am working with.