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I am currently trying to optimize the random forest classifier for a very high-dimensional dataset (p > 200k) using recursive feature elimination (RFE). caret package has a nice implementation for doing this (rfe()-function). However, I am also thinking about optimizing RAM and CPU usage.. That's why I wonder if there is an opportunity to set different (larger) number of trees to train the first forest (without feature elimination) and to use its importances to build the remaining ones (with RFE) using for example 500 trees with 10- or 5-fold cross-validation. I know that this option is available in varSelRF.. But how about caret? I didn't manage to find anything regarding this in the manual.

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I am not sure I get what you are after. Do you want to 1) train a random forest on all data, and 2) use its importance estimates to reduce the number of features prior to 3) doing RFE? – Backlin Nov 11 '12 at 10:55
Dear @Backlin. Correct me if I am wrong, but I thought that when performing RFE, you're actually training a new forest at each step. Therefore, if you have N steps (gradually removing for example 10%, 20%,.. of features) - you need to train N forests.. It is becoming even more expensive if you are going to do cross-validation for each step (N * n-folds). I wonder if it is possible perform RFE in caret using reduced number of trees (500) based on importances extracted from the "bigger forest" (10k of trees). Does it make sense? – sharky Nov 11 '12 at 11:57
Oh sorry, your question makes complete sense, I was just confused. – Backlin Nov 11 '12 at 13:16

You can do that. The rfFuncs list has an object called fit that defines how the model is fit. One argument to this function is called 'first' which is TRUE on the first fit (there is also a 'last' arg). You can set ntree based on this.

See the feature selection vignette for more details.


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Thank you very much for this @topepo! Could you please correct me if I'm wrong? To do this my code should look like this: - rfFuncs$fit <- function(x,y,first,last,...) { library(randomForest); randomForest(x, y, importance = first, ntree=10000,…)} - But as far as I understood the code - if I call rfe() function, it will still use this 'ntree' (10k), at each step. Sorry if it looks like I did not read the vignette - I did – sharky Nov 12 '12 at 11:45
I was thinking: rfFuncs$fit <- function(x,y,first,last,...) { library(randomForest) randomForest(x, y, importance = first, ntree=if(first) 10000 else 1000, ...) } – topepo Nov 12 '12 at 19:54
Dear @topepo. I can't vote up your response so far, but it was extremely helpful. I did not expect that the solution is so simple! Thank you very much! Then I will just call standard rfe() function (+rfFuncs) without 'ntree' specification and it will automatically build the first forest with ntree=10000, and the rest with ntree=1000, correct? – sharky Nov 13 '12 at 9:32

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