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!

partition problemin case you're interested. – Arun Jul 5 '13 at 23:10