# In R, how do I add a cumulative max by group?

I would like to use R to create a new column in my dataset that includes a cumulative maximum for each unique group. My data look like this:

``````group<-c("A","A","A","A","A","B","B","C","C","C")
replicate<-c(1,2,3,4,5,1,2,1,2,3)
x<-data.frame(cbind(group,replicate))
``````

I'd like to create the third column as shown below - the cumulative maximum for each group.

``````group   replicate max.per.group
A       1         5
A       2         5
A       3         5
A       4         5
A       5         5
B       1         2
B       2         2
C       1         3
C       2         3
C       3         3
``````
-

## 5 Answers

Try

``````# This is how you create your data.frame
group<-c("A","A","A","A","A","B","B","C","C","C")
replicate<-c(1,2,3,4,5,1,2,1,2,3)
x<-data.frame(group,replicate) # here you don't need c()

# Here's my solution
Max <- tapply(x\$replicate, x\$group,max)
data.frame(x, max.per.group=rep(Max, table(x\$group)))
group replicate max.per.group
1      A         1             5
2      A         2             5
3      A         3             5
4      A         4             5
5      A         5             5
6      B         1             2
7      B         2             2
8      C         1             3
9      C         2             3
10     C         3             3
``````
-

Here is an other base R solution:

``````cbind(x, cummax=unlist(tapply(x\$replicate, x\$group, function(x) rep(max(x), length(x)))))
group replicate cummax
A1     A         1      5
A2     A         2      5
A3     A         3      5
A4     A         4      5
A5     A         5      5
B1     B         1      2
B2     B         2      2
C1     C         1      3
C2     C         2      3
C3     C         3      3
``````
-

If you redefine `x` first (the `cbind` makes both columns factors),

``````x<-data.frame(group,replicate)
``````

you can use this:

``````merge(x,aggregate(replicate~group,x,FUN=max),all.x=TRUE,by="group")
group replicate.x replicate.y
1      A           1           5
2      A           2           5
3      A           3           5
4      A           4           5
5      A           5           5
6      B           1           2
7      B           2           2
8      C           1           3
9      C           2           3
10     C           3           3
``````
-

you can use the `plyr` package:

``````library(plyr)
> ddply(x, .(group), transform, max.per.group=max(replicate))
group replicate max.per.group
1      A         1             5
2      A         2             5
3      A         3             5
4      A         4             5
5      A         5             5
6      B         1             2
7      B         2             2
8      C         1             3
9      C         2             3
10     C         3             3
>
``````
-

you can use `rle` - `Run Length Encoding`

``````# Create the data.frame
group <- c("A","A","A","A","A","B","B","C","C","C")
replicate <- c(1,2,3,4,5,1,2,1,2,3)
x <- data.frame(group,replicate)

# using 'rle'
z <- rle(as.numeric(x\$group))\$lengths
x\$max.per.group <- rep(z, z)
x
``````
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This assumes that `replicate` starts at 1 for each group and increments by 1 for each subsequent entry. This assumption is true for the example (and likely for the more general problem), but it need not be and some of the other answers do not assume it. –  Brian Diggs Jul 26 '12 at 21:54