# binning continuous variables by IV value in R

I am building a logistic regression model in R. I want to bin continuous predictors in an optimal way in relationship to the target variable. There are two things that I know of:

1. the continuous variables are binned such that its IV (information value) is maximized

2. maximize the chi-square in the two way contingency table -- the target has two values 0 and 1, and the binned continuous variable has the binned buckets

Does anyone know of any functions in R that can perform such binning?

Your help will be greatly appreciated.

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Before you bin a continuous variable, read Frank Harrell's objections: biostat.mc.vanderbilt.edu/wiki/Main/CatContinuous –  Richie Cotton Aug 11 '11 at 9:56
Still I think this is one way of doing it. There are advantages and disadvantages. Modeling as continuous variables can also have drawbacks. –  Michael Aug 12 '11 at 0:47

The methods used by regression splines to set knot locations might be considered. The rpart package probably has relevant code. You do need to penalize the inferential statistics because this results in an implicit hiding of the degrees of freedom expended in the process of moving the breaks around to get the best fit. Another common method is to specify breaks at equally spaced quantiles (quartiles or quintiles) within the subset with IV=1. Something like this untested code:

``````cont.var.vec <- # names of all your continuous variables
breaks <- function(var,n) quantiles( dfrm[[var]],
probs=seq(0,1,length.out=n),
na.rm=TRUE)
lapply(dfrm[ dfrm\$IV == 1 , cont.var.vec] , breaks, n=5)
``````
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Thanks for the quick reply! –  Michael Aug 11 '11 at 22:31
Could you explain your code? If I have a data frame df in which y in binary and x1, x2, are continuous predictiors and x3 it catogorical, how do I apply your code to bin x1 and x2? –  Michael Aug 11 '11 at 22:36
when you say "specify breaks at equally spaced quantiles (quartiles or quintiles) within the subset with IV=1", do you mean that x1 and x2 are binned into four quantiles using the rows where y=1? –  Michael Aug 11 '11 at 22:39
Sorry about the mulpiple messages, I hit return, it just went out. Thanks –  Michael Aug 11 '11 at 22:40
I was implicitly assuming that "1" was the target category with the lower count. The breaks are set to roughly get n==5-1 equal sized groups, and the same breaks are then used in the larger sized target group. –  BondedDust Aug 12 '11 at 7:07