Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm looking for a way to split a data frame into groups of equal size (essentially same number of rows in each group), whose groups have a nearly equal mean.

User Data
1 5.0
2 4.5
3 3.5
4 6.0
5 7.0
6 6.5
7 5.5
8 6.2
9 5.7
10 5.9

This is very similar to this request However this only splits the data into 2 groups.

My actual dataset contains anywhere from 75-150 rows, and I need to split it into anywhere from 5-10 groups of equal mean and fairly equal size.

I've researched on Google & Stack Exchange for the last few days, and I'm just not having much luck. Any guidance would be great.

Thanks in advance!

More details:

Maybe I need to provide some more details, below I've included a real dataset. We are a transportation company, this data set has Driver ID, Miles, Gallons provided. What I have been doing is reading the data into R, and adding and MPG column like so:

data <- read.csv('filename')  
data$MPG <- data$Miles / data$Gallons

Then I tried the two provided answers below. Arun's idea gives me almost equal group sizes (9 members per group, 10 groups), however the variation of the means is large, from 6.615 - 7.093 which is too large of a variation for me to start off with. Thomas' idea gets a little bit tighter variation, but the group sizes are all different from 6 - 13 members.

What we are looking to do is improve fleet MPG, and we're going to accomplish this with a team based competition, so I need to randomly put the teams together with them all starting from relatively the same group MPG.

Maybe that helps and can lead us in the correct direction? I tried doing this just in my programming language, but it locks the computer up every time, so I figured that R would probably be able to process the data better.

Thanks again!

share|improve this question
I think this is related to partition problem in case you're interested. –  Arun Jul 5 '13 at 23:10
Thank you for your responses, you provided me with a solution that will work for the datasets I generate. –  dcmoody Jul 8 '13 at 22:01

3 Answers 3

up vote 3 down vote accepted

If similar means is really all that matters, I've put together a simulation below that basically looks at a bunch of different combinations of the data (n) for a particular group size (k) and then minimizes the variance of the group means. With that minimization you can then extract that grouping from the simulation results.

df <- data.frame(User=1:1000,Data=rnorm(1000,0,1))     # example data
myfun = function(){
    k <- 5                                             # number of groups
    tmp <- seq(length(mpg))%%ngroups                   # really efficient code from @qwwqwwq's answer
    thisgroup <- sample(tmp, dim(df)[1], FALSE)        # pull a sample
    # thisgroup <- sample(1:k,dim(df)[1],TRUE)         # original version
    thisavg <- as.vector(by(df$Data, thisgroup, mean)) # group means
    thisvar <- var(thisavg)                            # variance of means
    return(list(group=thisgroup, avgs=thisavg, var=thisvar))
n <- 1000 # number of simulations
sorts <- replicate(n, myfun(), simplify=FALSE)
wh <- which.min(sapply(sorts, function(x) x$var))      # minimization
# sorts[[wh]]                   # this is the sample you want
split(df, sorts[[wh]]$group)    # list of separate dataframes for each group

You could also have k of different sizes, if you don't care about how many cases are in each group by just moving the k <- 5 line into the function and having it be a random draw from the range of number of groups you're willing to have.

There are probably other ways to do this, though.

share|improve this answer
doesn't seem right: I think the OP wants to split the data in disjoint subsets, while your code compares groups that can have elements in common, as far as I can see –  baptiste Jul 5 '13 at 22:39
"knapsack problem" might be a good keyword to search on ... –  Ben Bolker Jul 5 '13 at 22:41
@baptiste Where do you see overlapping sets in this code? –  Thomas Jul 5 '13 at 22:42
@BenBolker That seems like a comment for the OP, not this answer. –  Thomas Jul 5 '13 at 22:45
I see, I misunderstood the sample() bit, sorry! –  baptiste Jul 5 '13 at 22:55

Going by Thomas' idea, here's a brute-force/greedy approach, which'll give more or less the same values (you can opt for more repetitions until you agree with the closeness of the solution).

# Assuming the data you provided is in `df`
grp <- 5
myfun <- function() {
    samp <- sample(nrow(df))
    s.mean <- tapply(df$Data, samp %% grp, mean)
    s.var <- var(s.mean)
    list(samp, s.mean, s.var)
out <- replicate(1000, myfun(), simplify=FALSE)
min.pos <- which.min(sapply(out, `[[`, 3))
min.idx <- out[[min.pos]][[1]]
split(df$Data[min.idx], min.idx %% grp)

[1] 7.0 5.9

[1] 5.0 6.5

[1] 5.5 4.5

[1] 6.2 3.5

[1] 5.7 6.0

This is how out[min.pos] looks like:


 [1]  7  9  8  5  3  4  1  2 10  6

   0    1    2    3    4 
5.85 5.70 5.60 5.25 5.50 

[1] 0.05075
share|improve this answer
This appears to be substantively identical to my answer... –  Thomas Jul 5 '13 at 22:54
he already mentioned that in answer :) –  Metrics Jul 5 '13 at 22:58

Simplest way I can think of: Sort the data, modulo all the indicies by the number of groups, and you're done. Should work well if the data are normally distributed I think. Has the advantage of the groups being as equally sized as possible.

mpg <- rnorm(150)
mpg <- sort(mpg)
ngroups = 13
df = data.frame( mpg=mpg, group=seq(length(mpg))%%ngroups)
tapply(df$mpg, df$group, mean)

           0            1            2            3            4            5            6            7            8 
 0.080400272 -0.110797283 -0.046698548 -0.014177675  0.024410834  0.048370962  0.066265303  0.087119914 -0.062259638 
           9           10           11           12 
-0.042172496 -0.003451581  0.033853024  0.056947458 
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.