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I am a R newbie so hopefully this is a solvable problem for some of you. I have a dataframe containing more than a million data-points. My goal is to compute a weighted mean with an altering starting point.

To illustrate consider this frame ( data.frame(matrix(c(1,2,3,2,2,1),3,2)) )

  X1 X2
1  1  2
2  2  2
3  3  1

where X1 is the data and X2 is the sampling weight.

I want to compute the weighted mean for X1 from starting point 1 to 3, from 2:3 and from 3:3.

With a loop I simply wrote:

B <- rep(NA,3) #empty result vector
for(i in 1:3){
  B[i] <- weighted.mean(x=A$X1[i:3],w=A$X2[i:3]) #shifting the starting point of the data and weights further to the end

With my real data this is impossible to compute because for each iteration the data.frame is altered and the computing takes hours with no result.

Is there a way to implement a varrying starting point with an apply command, so that the perfomance increases?

regards, Ruben

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I don't understand why your data frame has to be altered. If your real data is different in some important way from your example, how are we supposed to construct a solution that works on your real data? – joran Mar 7 '12 at 20:28
Sorry, that probably came out wrong. The data frame is not altered but because of the altering start point, in each iteration the weighted mean is computed for a new subsection of the orginal data frame. – Ruben Mar 7 '12 at 21:22
up vote 2 down vote accepted

Building upon @joran's answer to produce the correct result:

with(A, rev(cumsum(rev(X1*X2)) / cumsum(rev(X2))))
# [1] 1.800000 2.333333 3.000000

Also note that this is much faster than the sapply/lapply approach.

share|improve this answer
Right, I got the order wrong. Nicely done! – joran Mar 7 '12 at 21:56
wow, thanks. I was in the middle of writing something about "reverse cumsum" but that's exactly it. – Ruben Mar 7 '12 at 22:03

You can use lapply to create your subsets, and sapply to loop over these, but I'd wager there would be a quicker way.

sapply(lapply(1:3,":",3),function(x) with(dat[x,],weighted.mean(X1,X2)))
[1] 1.800000 2.333333 3.000000
share|improve this answer
Thanks a lot for the answer! I knew there had to be some sort of apply variation that would work.I am trying to wrap my head around it and will implement it. It sure seems to work. – Ruben Mar 7 '12 at 21:47

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