I'm trying to do stepwise forward feature selection on a
knn model. I'm using the
FSelector package and the
The data set is ~ 400k rows by ~ 100 columns before feature elimination.
The problem is that the best performing feature doesn't have a lot of levels and thus there are a lot of ties causing the model to fail.
My question is this:
If I know what the best performing feature is, is there a way to start the forward.search() with 2 variables instead of one?
In other words if I have 5 variables. The forward.search would go through them searching for the best one like :
depVar ~ var1 depVar ~ var2 depVar ~ var3 depVar ~ var4 depVar ~ var5
once the best one is determined (ie
var3) the algo would do this:
depVar ~ var3 + var1 depVar ~ var3 + var2 depVar ~ var3 + var4 depVar ~ var3 + var5
and so on. Is there a way to skip to the second step if I know the best performing single variable?
Any suggestions would be appreciated.