Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

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?

share|improve this question
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
up vote 4 down vote accepted

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" )
share|improve this answer
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)

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

#Test it. Means should be less than .02 different and have roughly equivalent sample sizes.
out <- FUN(.02)
> 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.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.