# Calculating statistics on subsets of data

Facebook and Stack Exchange are now working together to support the Facebook developer community. Facebook engineers participate here along with the best Facebook developers in the world. If you have a technical question about Facebook, this is the best place to ask.

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 at 12:52
This function always skips my mind... – Arun Feb 11 at 12:54
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 at 13:20

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
``````
-
+1 for the mentioning of `plyr` :) – juba Feb 11 at 15:05

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
``````
-
+1 for the mentioning of `data.table` :) – Paul Hiemstra Feb 11 at 12:53
@PaulHiemstra: ...which will cause Matthew Dowle to edit the `data.table` tag into the post. :) – Joshua Ulrich Feb 11 at 14:53