# Split vector such that means of two groups are nearly equal

I have a data frame `df` with 2 variables A and B. I would like to split A in groups 1 and 2 so that `mean(df\$B[df\$group==1])` as close as possible to `mean(df\$B[df\$group==2])`

Or just to express it otherwise, what I would like is to find a cut point (`cutp`) in `df\$A` that would minimize the `abs(mean(df\$B[df\$A<cutp])-mean(df\$B[df\$A>=cutp]))`

Any ideas?

-
Do groups 1 and 2 have to be equal? – Tyler Rinker Jan 14 '12 at 22:39
Thanks for the comment. Groups 1 and 2 should have approximately the same number of cases (or at least no big differences). – ECII Jan 14 '12 at 22:42
Does variable A play any role in the question? – Vincent Zoonekynd Jan 14 '12 at 23:01
I don't get your comment Vincent. – ECII Jan 14 '12 at 23:45
Your data.frame contains two columns, A and B, and you write that you want to "split A" (not "split df") into two groups, which suggests that column A should be used in the splitting -- yet, it does not explicitly appear in your condition. – Vincent Zoonekynd Jan 14 '12 at 23:54

If you want to find a threshold on variable A, to split the data into two groups, so that the means of B in those two groups be similar, you can compute these means for all possible cut-points, and check when the distance between those means is minimal.

``````# Sample data
n <- 10
d <- data.frame(
A = rnorm(n),
B = rnorm(n)
)

# The quantity to minimize
# (You can use a loop instead of apply.)
d\$differences <- apply(
d, 1,
# Compute the difference of the means for each value of A
function (u) {
i <- d\$A <= u[1];
abs( mean( d\$B[which(i)]) - mean(d\$B[which(!i)] ) )
}
)
# The mean of an empty vector is NaN: discard those values
d\$differences[ ! is.finite( d\$differences ) ] <- Inf
# Take the minimum
threshold <- d\$A[ which.min( d\$differences ) ]
# Build the groups
d\$group <- ifelse( d\$A <= threshold, "group 1", "group 2" )
``````
-
Yeap, that's it. Thank you very much. – ECII Jan 15 '12 at 1:04

I'm still not sure how column A factors into it. It seems you want to create a new column that has two levels which create ~= mean values for column B. Column A is obviously associated with the new column created, but does not directly factor into the calculation needed. Am I missing something?

Regardless, here's a start (note this can be made much more robust, but proof of concept should work). Define a tolerance that you find acceptable and then set up a while loop to create new groups until the condition is met, i.e.

``````FUN <- function(tol){
df\$groups <- sample(1:2, nrow(df), TRUE)

while(abs(mean(df\$B[df\$groups == 1]) - mean(df\$B[df\$groups == 2])) > tol) {
df\$groups <- sample(1:2, nrow(df), TRUE)
}
return(df)
}

set.seed(101)
df <- data.frame(A=runif(20),B=runif(20))

#Test it. Means should be less than .02 different and have roughly equivalent sample sizes.
set.seed(101)
out <- FUN(.02)
library(plyr)
> ddply(out, "groups", summarize, n = length(B), mean = mean(B))
groups  n      mean
1      1 11 0.5229024
2      2  9 0.5037279
``````

I should note that you could create a runaway function if you set `tol` super low so don't blame me if your computer crashes.

-