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I have a dataset with a datetime (POSIXct), a "node" (factor) and and a "c" (numeric) columns, for example:

                 date node           c
1 2011-08-14 10:30:00    2 0.051236000
2 2011-08-14 10:30:00    2 0.081230000
3 2011-08-14 10:31:00    1 0.000000000
4 2011-08-14 10:31:00    4 0.001356337
5 2011-08-14 10:31:00    3 0.001356337
6 2011-08-14 10:32:00    2 0.000000000

I need to take the mean of column "c" for all pairs of "date" and "node", so I did this:

tapply(data$c, list(data$node, data$date), mean)

The result I obtain is what I want, but in a strange structure:

num [1:5, 1:8923] 0 0 0.00092 0.00146 NA ...
 - attr(*, "dimnames")=List of 2
  ..$ : chr [1:5] "1" "2" "3" "4" ...
  ..$ : chr [1:8923] "2011-08-14 10:30:00" "2011-08-14 10:31:00" "2011-08-14 10:32:00" "2011-08-14 10:33:00" ...

Where an example output would be:

  2011-08-17 23:56:00 2011-08-17 23:57:00 2011-08-17 23:58:00
1        4.759077e-05        4.759077e-05        4.759077e-05
2        0.000000e+00        3.875248e-05        1.595690e-04
3        1.134391e-03        1.134391e-03        1.109730e-03
4        4.882813e-04        6.914658e-04        4.955846e-04
5        0.000000e+00        0.000000e+00        0.000000e+00

What I was going for was something like the original structure, with a datetime, the node factor and the "c" value. I cannot figure out how to achieve this. Any help would be appreciated.

Many thanks.

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3 Answers

up vote 6 down vote accepted

You might try...

aggregate( c ~ node + date, data = data, FUN = mean )
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All the methods suggested above worked for me, but this turned out to be the quickest (on a dataset of over 2M rows) and produced the exact output that I wanted. Cheers! –  gozzilli Oct 6 '11 at 10:07
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If you want output that's a data frame with three columns, you probably would benefit from looking at the plyr package (assuming your data are stored in dat):

ddply(dat,.(date,node),summarise,m = mean(c))
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Also see Johns answer below. I'm very pro aggregate as, from my experience, on large data sets it is substantially more computationally efficient. –  nzcoops Sep 9 '11 at 7:30
@nzcoops For large data sets did you see this recent article Comparison of ave, ddply and data.table? –  Matt Dowle Sep 9 '11 at 7:46
@Matthew Dowle, that's for that. That is definitely my experience working with large data. I'll have to make the effort to learn more about data.table and incorporate it in my work. plyr is great for some things, but it baffles me why on here people continually jump to it as a first port of call when there are base functions that solve the problem... (and faster), with clearer more concise code. –  nzcoops Sep 11 '11 at 7:11
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Instead of tapply you want to use ave

data$grp.mean <- ave(data$c, list(data$node, data$date), FUN= mean)

Looking again at this I am wondering if you wanted to have the aggregation done on the basis of "date" in the calendar sense of 24 hours?

If you wanted to use the results you already have (assuming they are named "M") you might want to try :

newdf <- melt(t(M))
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