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I am trying to subset a data frame using column names and variable importance. I would like to train a model and test the results on all variables in batches of five. I am able to write this script using a for loop, but couldn't find a plyr like solution. I also would like to be able to store all results in a single data frame or list, which then I could use to analyze results.

Here's the code I got so far:

library('plyr')
library('FSelector')
data(iris)
wts.chisq.iris <- chi.squared(Species ~ ., data = iris) # chi sq importance
wts.chisq.iris$attr <- rownames(wts.chisq.iris)                   # add column with variable names
wts.chisq.iris <- wts.chisq.iris[with(wts.chisq.iris, order(-attr_importance)), ]  # sort descending by variable importance

for (i in 1:4){
    print(lm(Species ~., data = iris[ , c(wts.chisq.iris[1:i, 2], "Species")]))  # store this in a list or df

}

I appreciate your help.

EDIT: I read many other solutions using caret and all, but I am still unable to store all the models and run through feature subsets (variables) of a data frame.

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The for-loop doesn't look as though it would do what you describe in words. Looks like you would get models with 1, 2, 3, and 4 cases and only one term. Actually I cannot figure out what this code would give: iris[ , c(wts.chisq.iris[1:i, 2], "Species")]. Anyway, 'iris' doesn't look like a particularly good test case, but maybe if you asked for doing it in groups of 2 columns at a time??? Doing it by rows looks just plain wrong. –  BondedDust Aug 25 '12 at 1:07
    
@DWin thanks for your reply. I did run the code as is, and it does run lm with 1, 2, 3, and 4 variables and prints the results of lm. (so not rows, but columns) I am unable to figure out how to store the results properly for an easy summary, and how to get rid of the loop. Also, I am using iris just for a MWE –  karlos Aug 27 '12 at 12:57

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