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I'm experimenting with R and the randomForest Package, I have some experience with SVM and Neural Nets. My first test is to try and regress: sin(x)+gaussian noise. With Neural Nets and svm I obtain a "relatively" nice approximation of sin(x) so the noise is filtered out and the learning algorithm doesn't overfit. (for decent parameters) When doing the same on randomForest I have a completely overfitted solution. I simply use (R 2.14.0, tried on 2.14.1 too, just in case):

library("randomForest")
x<-seq(-3.14,3.14,by=0.00628)
noise<-rnorm(1001)
y<-sin(x)+noise/4
mat<-matrix(c(x,y),ncol=2,dimnames=list(NULL,c("X","Y")))
plot(x,predict(randomForest(Y~.,data=mat),mat),col="green")
points(x,y)

I guess there is a magic option in randomForest to make it work correctly, I tried a few but I did not find the right lever to pull...

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1 Answer

You can use maxnodes to limit the size of the trees, as in the examples in the manual.

r <- randomForest(Y~.,data=mat, maxnodes=10)
plot(x,predict(r,mat),col="green")
points(x,y)
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That was one of the option I tried, it gives a slightly better result but it still seems very bad compared to svm and nn...there must be a better set of option... –  user1206729 Feb 14 '12 at 13:42
    
One of the interesting things about machine learning is that there is not a one-size-fits-all method. Certain types of algos are better for different types of data. Unfortunately I haven't found a source outlining which method is best for which data set and thus rely almost exclusively on trial and error. –  screechOwl Apr 25 '12 at 15:45
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