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I'm a newbie so I gather there will be an easy answer to my question.

Say I have the following matrix:

x1 = 1:288

x2 = matrix(x1,nrow=96,ncol=3)

Is there an easy way to get the mean of rows 1:24,25:48,49:72,73:96 for column 2?

Basically I have a one year time series and I have to average some data every 24 hours.

Thank you very much.

share|improve this question

There is.

Suppose we have the days :

Days <- rep(1:4,each=24)

you could do easily


If you have a dataframe with a Date variable, you can use that one. You can do that for all variables at once, using aggregate :

x2 <-,Days))

Take a look at the help files of these functions to start with. Also do a search here, there are quite some other interesting answers on this problem :

PS : If you're going to do a lot of timeseries, you should take a look at the zoo package (on CRAN : )

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@SnowFrog You're wrong. tapply doesn't create a data frame. It creates a vector (in this case). Big difference. – Joris Meys Nov 13 '13 at 11:58
One issue with the tapply method is that it creates a vector (number of columns = number of days). The aggregate method creates a data frame (1 column with number of rows = number of days), which may be more practical if subsequent manipulation of the data is needed. – SnowFrog Nov 20 '13 at 11:07

Quite compact and computationally fast way of doing this is to reshape the vector into a suitable matrix and calculating the column means.

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clean solution, provided that there is no missing data anywhere. Otherwise the matrix wouldn't represent the days. – Joris Meys Jan 14 '11 at 12:14
You do need to be careful with this method so that the dimensions are right. But you can deal with missing data by using NA for those and using na.rm=TRUE – Matti Pastell Jan 14 '11 at 12:24
I am aware of that :-) I means missing in the sense of "not every day has 24 rows of data" – Joris Meys Jan 14 '11 at 14:22

1) ts. Since this is a regularly spaced time series, convert it to a ts series and then aggregate it from frequency 24 to frequency 1:

> aggregate(ts(x2[, 2], freq = 24), 1, mean)


Time Series:
Start = 1
End = 4
Frequency = 1
[1] 108.5 132.5 156.5 180.5

2) zoo. Here it is using zoo. The zoo package can also handle irregularly spaced series (if we needed to extend this). Below day.hour is the day number (1, 2, 3, 4) plus the hour as a fraction of the day so that floor(day.hour) is just the day number:

> library(zoo)
> day.hour <- seq(1, length = length(x2[, 2]), by = 1/24)
> z <- zoo(x2[, 2], day.hour)
> aggregate(z, floor, mean)
    1     2     3     4 
108.5 132.5 156.5 180.5

If zz is the output then coredata(zz) and time(zz) are the values and times, respectively, as ordinary vectors.

share|improve this answer
+1 for showing how to use zoo and ts for that. I didn't mention it as I didn't want to assume too much about the data in the real problem, but it is definitely relevant and helpful. – Joris Meys Jan 14 '11 at 14:20

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