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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?

 x = train.x,
 y = train.y,

instead of

 y ~ .,
 data = cbind(y, x)

? I am primarily using caret. My list so far:


Only gbm is remotely reasonable in terms of speed for the data sets I am working with.

share|improve this question
I don't see how a parametrized list would be any more convenient than a formula. If you're constructing the argument list by name, it is no more difficult to simply construct the formula expression itself. If you're utilizing a list of elements to pass as an argument (e.g., through, then this is no more difficult than using formula functions like model.matrix and model.frame, among others, to parse a formula given a data set. In either case, you still need to automate your selection of parameters, either by name or by reference to entities (or some manipulation thereof). Make sense? – Bryan Goodrich May 10 '12 at 21:31
@Bryan My concern is not convenience but computational cost. Evaluating y ~ . hundreds of times on a high-dimensional data set takes forever because model.frame is slow. See for example this snippet from ?gbm -- 'gbm is a front-end to that uses the familiar R modeling formulas. However, model.frame is very slow if there are many predictor variables. For power-users with many variables use For general practice gbm is preferable.' – lockedoff May 10 '12 at 21:39
Many methods allow to use non-formula interface. Look at e1071 package, there are several classification techniques collected in one place - svm, knn, ann, random forest, etc. But you can of course use the separate package in which certain method is implemented. – DrDom May 11 '12 at 5:09

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