# Calculating statistics on subsets of data

Here is a small reproducible example of my data:

``````> mydata <- structure(list(subject = c(1, 1, 1, 2, 2, 2), time = c(0, 1, 2, 0, 1, 2), measure = c(10, 12, 8, 7, 0, 0)), .Names = c("subject", "time", "measure"), row.names = c(NA, -6L), class = "data.frame")

> mydata

subject  time  measure
1          0      10
1          1      12
1          2       8
2          0       7
2          1       0
2          2       0
``````

I would like to generate a new variable containing the mean of `measure` for that particular subject, so:

``````subject  time  measure  mn_measure
1          0      10      10
1          1      12      10
1          2       8      10
2          0       7      2.333
2          1       0      2.333
2          2       0      2.333
``````

Is there an easy way to do this, other than looping through all the records programatically or reshaping to wide format first ?

-

Use the base R function `ave()`, which despite its confusing name, can calculate a variety of statistics, including the `mean`:

``````within(mydata, mean<-ave(measure, subject, FUN=mean))

subject time measure      mean
1       1    0      10 10.000000
2       1    1      12 10.000000
3       1    2       8 10.000000
4       2    0       7  2.333333
5       2    1       0  2.333333
6       2    2       0  2.333333
``````

Note that I use `within` just for the sake of shorter code. Here is the equivalent without `within()`:

``````mydata\$mean <- ave(mydata\$measure, mydata\$subject, FUN=mean)
mydata
subject time measure      mean
1       1    0      10 10.000000
2       1    1      12 10.000000
3       1    2       8 10.000000
4       2    0       7  2.333333
5       2    1       0  2.333333
6       2    2       0  2.333333
``````
-
+1 for a solution which does not require an additional package. –  Paul Hiemstra Feb 11 '13 at 12:52
Nice. Thanks a lot !! I'll have to get myself fully versed with `ave` as this is at least the 2nd time it's been used as a solution to my question.... –  P Sellaz Feb 11 '13 at 13:20

Alternatively with `data.table` package:

``````require(data.table)
dt <- data.table(mydata, key="subject")
dt[, mn_measure := mean(measure), by=subject]

#   subject time measure mn_measure
# 1:       1    0      10  10.000000
# 2:       1    1      12  10.000000
# 3:       1    2       8  10.000000
# 4:       2    0       7   2.333333
# 5:       2    1       0   2.333333
# 6:       2    2       0   2.333333
``````
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+1 for the mentioning of `data.table` :) –  Paul Hiemstra Feb 11 '13 at 12:53
@PaulHiemstra: ...which will cause Matthew Dowle to edit the `data.table` tag into the post. :) –  Joshua Ulrich Feb 11 '13 at 14:53

You can use `ddply` from the `plyr` package:

``````library(plyr)
res = ddply(mydata, .(subject), mutate, mn_measure = mean(measure))
res
subject time measure mn_measure
1       1    0      10  10.000000
2       1    1      12  10.000000
3       1    2       8  10.000000
4       2    0       7   2.333333
5       2    1       0   2.333333
6       2    2       0   2.333333
``````
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+1 for the mentioning of `plyr` :) –  juba Feb 11 '13 at 15:05