# Computing multiple variance of a dataset in R

My problem is somewhat related to this question.

I have a data as below

``````V1   V2
..   1
..   2
..   1
..   3
``````

I need to calculate variance of data in `V1` for each value of `V2` cumulatively (This means that for a particular value of `V2` say `n`,all the rows of `V1` having corresponding `V2` less than `n` need to be included.

Will `ddply` help in such a case?

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## 1 Answer

I don't think `ddply` will help since it is built on the concept of taking non-overlapping subsets of a data frame.

``````d <- data.frame(V1=runif(1000),V2=sample(1:10,size=1000,replace=TRUE))
u <- sort(unique(d\$V2))
ans <- sapply(u,function(x) {
with(d,var(V1[V2<=x]))
})
names(ans) <- u
``````

I don't know if there's a more efficient way to do this ...

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Thank you, this has solved the problem for me. I'll wait for sometime for an alternative answer, otherwise will accept your solution! – hardikudeshi Sep 16 '12 at 14:22
Ben's answer is simple and to the point. Probably isn't gonna get much better. – Tyler Rinker Sep 16 '12 at 15:54
I think you could do something where you computed the sum of `V1` and the sum of `V1^2` for each piece, computed cumulative sums, and computed the cumulative variance from that, but it would be a little bit tricky ... – Ben Bolker Sep 16 '12 at 16:25