# Apply a function to groups within a data.frame in R

I am trying to get the cumulative sum of a variable (v) for groups ("a" and "b") within a dataframe. How can I get the result at the bottom -- whose rows are even numbered properly -- into column cs of my dataframe?

``````> library(nlme)
> g <- factor(c("a","b","a","b","a","b","a","b","a","b","a","b"))
> v <- c(1,4,1,4,1,4,2,8,2,8,2,8)
> cs <- rep(0,12)
> d <- data.frame(g,v,cs)

> d
g v cs
1  a 1 0
2  b 4 0
3  a 1 0
4  b 4 0
5  a 1 0
6  b 4 0
7  a 2 0
8  b 8 0
9  a 2 0
10 b 8 0
11 a 2 0
12 b 8 0

> r=gapply(d,FUN="cumsum",form=~g, which="v")
>r

\$a
v
1  1
3  2
5  3
7  5
9  7
11 9

\$b
v
2   4
4   8
6  12
8  20
10 28
12 36

> str(r)
List of 2
\$ a:'data.frame':  6 obs. of  1 variable:
..\$ v: num [1:6] 1 2 3 5 7 9
\$ b:'data.frame':  6 obs. of  1 variable:
..\$ v: num [1:6] 4 8 12 20 28 36
``````

I guess I could figure out some laborious way to get the data from those dataframes into d\$cs, but there's got to be some easy tweak I'm missing.

`split<-` is a pretty weird beast

``````split(d\$cs, d\$g) <- lapply(split(d\$v, d\$g), cumsum)
``````

``````> d
g v cs
1  a 1  1
2  b 4  4
3  a 1  2
4  b 4  8
5  a 1  3
6  b 4 12
7  a 2  5
8  b 8 20
9  a 2  7
10 b 8 28
11 a 2  9
12 b 8 36
``````
• That was `split<-.default`. I didn't realize it existed (or that it was the basis for ave.) `split<-.data.frame` is even weirder. May 18, 2012 at 1:06

I would use `ave`. If you look at the source of `ave`, you'll see it essentially wraps Martin Morgan's solution.

``````R> g <- factor(c("a","b","a","b","a","b","a","b","a","b","a","b"))
R> v <- c(1,4,1,4,1,4,2,8,2,8,2,8)
R> d <- data.frame(g,v)
R> d\$cs <- ave(v, g, FUN=cumsum)
R> d
g v cs
1  a 1  1
2  b 4  4
3  a 1  2
4  b 4  8
5  a 1  3
6  b 4 12
7  a 2  5
8  b 8 20
9  a 2  7
10 b 8 28
11 a 2  9
12 b 8 36
``````
• I always forget about `ave`; though is the same out come as the other 2? May 18, 2012 at 0:36
• @TylerRinker: it's essentially the same as Martin's solution (see my edit). May 18, 2012 at 0:39
• I was confused b/c I compared to joran's. I forgot plyr rearranges things. +1 May 18, 2012 at 0:45
• Nice one, adding `ave` to my mental library of useful functions. May 18, 2012 at 3:54
• Thanks! This is the simplest so I'm going with it. May 18, 2012 at 4:17

My tool of choice for these things is the plyr package:

``````require(plyr)
> ddply(d,.(g),transform,cs = cumsum(v))
g v cs
1  a 1  1
2  a 1  2
3  a 1  3
4  a 2  5
5  a 2  7
6  a 2  9
7  b 4  4
8  b 4  8
9  b 4 12
10 b 8 20
11 b 8 28
12 b 8 36
``````
``````> library(nlme)
> g <- factor(c("a","b","a","b","a","b","a","b","a","b","a","b"))
> v <- c(1,4,1,4,1,4,2,8,2,8,2,8)
> cs <- rep(0,12)
> d <- data.frame(g,v,cs)
> d <- d[order(d\$g),]
> temp <- by(d\$v,d\$g,cumsum)
> d\$cs <- do.call("c",temp)
> d
g v cs
1  a 1  1
3  a 1  2
5  a 1  3
7  a 2  5
9  a 2  7
11 a 2  9
2  b 4  4
4  b 4  8
6  b 4 12
8  b 8 20
10 b 8 28
12 b 8 36
``````

Another solution using the by function, but I had to order the data first