# Possible to arrange observations in groups of N that reflect data set proportions using R?

Are there are functions in R that arrange observations in groups of N that reflect, as closely as possible, the data set proportions of certain variables?

For example, if I have a data set with 8 observations and two variables each with two levels with data set proportions as follows:

``````    Var1 Var2
1   0.5  0.5
2   0.5  0.5
``````

Are there any functions that would enable me to optimally sample from the data set to say create groups of 2 observations that reflect the above data set proportions?

Example data:

``````Data <- read.table(text="   Obs Var1    Var2
1   1   1
2   1   2
3   2   1
4   2   2
5   1   1
6   1   2
7   2   1
``````

Desired Result:

``````Result <- read.table(text=" Obs Var1    Var2    Group_ID
1   1   1   1
4   2   2   1
2   1   2   2
3   2   1   2
5   1   1   3
7   2   1   3
6   1   2   4
8   2   2   4   ", header=T)
``````

Not that all groups have proportions of .5 for each level of each variable.

• Do you want this to generalize? And if so, it what way - more variables, more different proportions? Is the group size an input, or does it need to be detected? What happens in cases where an exact solution isn't possible? – Gregor Feb 3 '17 at 18:46
• The data that I am trying to implement this in has 4 variables with varying levels from 3-4. I am trying to have each group reflect, as close as possible, the data set proportions of these levels. An exact solution will not be possible, so I was thinking of just randomly assigning the remaining observations to groups. The other issue is I have no conception of how to optimize the groups, i.e. test to see if the observations are efficiently grouped. – RTrain3k Feb 3 '17 at 19:12
• And for what purpose are you doing this? I would recommend just doing a random sample or a stratified random sample based on one or two variables. Bootstrap it if you need to reduce variance. If you ignore that advice and want to proceed with the question, I think you need a slightly messier example and to be clear about what the inputs are and what is to be detected/calculated. I still don't know if the group size `N` is an input variable or not. – Gregor Feb 3 '17 at 19:17
• Sorry about that @Gregor. Group size `N` would be an input. For example my data frame has 660 observations and I am trying to group them into 10 observations each. I found a function in the second answer here, stackoverflow.com/questions/13536537/…, but it does not handle variables that have varying levels. – RTrain3k Feb 3 '17 at 19:31
• One other algorithm proposal: randomly assign groups of size `N`. Save and remove any groups that meet your requirements (preferably with some tolerance factor) and repeat on the remaining data. Iterate until you're satisfied. – Gregor Feb 3 '17 at 19:34