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 have a data frame and I want to take average of every 60 records for all the columns, and return a new data frame.

For example, I want to take average of every column from row 1 to row 60, then row 61-row 120, then 121-180, likewise...and go thru the whole data frame. Then have all these means summarized under one table as new data frame.

Any one can help me? Thanks so much!

share|improve this question
1  
Hi there! Please make your post reproducible by having a look at How to make a great reproducible example for us to help you. Thank you. –  Arun Apr 10 '13 at 18:28
    
Usually, this isn't a very nice programming practice. It's better to specify the variables and values that define these groups, not just rows 1-60, 61-120,... –  Ferdinand.kraft Apr 11 '13 at 1:46

2 Answers 2

Obviously not tested on your data but was tested on the first example in help(aggregate)

dflen <- nrow(dfrm)
aggregate(dfrm, list(rep(1:(dflen/60 +1), each=60, length=dflen) ), mean)
share|improve this answer

I was doing something convoluted with lapply, and colMeans before I realised that it would be much easier with rollapply from package:zoo. For the sake of completeness I show how the two approaches yeild identical results on some dummy data, which is 5 columns wide by 120 rows long:

    data <- data.frame(matrix(runif(600),nrow=120))
    nrows <- 60
    t(sapply( rev(1:floor(nrow(data)/nrows)) , function(x){ colMeans(data[c(rev(seq.int( nrow(data)/x))[1:60]),]) } ))
                X1        X2        X3        X4        X5
#   [1,] 0.4706680 0.4780024 0.4749281 0.4910620 0.4815172
#   [2,] 0.5236926 0.4385900 0.4979433 0.4787086 0.5616210

Or more simply with rollapply()

    require(zoo)
    rollapply(data, 60, FUN = mean , by = 60 )
                X1        X2        X3        X4        X5
#   [1,] 0.4706680 0.4780024 0.4749281 0.4910620 0.4815172
#   [2,] 0.5236926 0.4385900 0.4979433 0.4787086 0.5616210
share|improve this answer

Your Answer

 
discard

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.