I have a dataframe in R of the following form:

> head(data)
  Group Score Info
1     1     1    a
2     1     2    b
3     1     3    c
4     2     4    d
5     2     3    e
6     2     1    f

I would like to aggregate it following the Score column using the max function

> aggregate(data$Score, list(data$Group), max)

  Group.1         x
1       1         3
2       2         4

But I also would like to display the Info column associated to the maximum value of the Score column for each group. I have no idea how to do this. My desired output would be:

  Group.1         x        y
1       1         3        c
2       2         4        d

Any hint?


First, you split the data using split:


Than, for each chunk, select the row with max Score:

lapply(split(z,z$Group),function(chunk) chunk[which.max(chunk$Score),])

Finally reduce back to a data.frame do.calling rbind:

do.call(rbind,lapply(split(z,z$Group),function(chunk) chunk[which.max(chunk$Score),]))


  Group Score Info
1     1     3    c
2     2     4    d

One line, no magic spells, fast, result has good names =)


A base R solution is to combine the output of aggregate() with a merge() step. I find the formula interface to aggregate() a little more useful than the standard interface, partly because the names on the output are nicer, so I'll use that:

The aggregate() step is

maxs <- aggregate(Score ~ Group, data = dat, FUN = max)

and the merge() step is simply

merge(maxs, dat)

This gives us the desired output:

R> maxs <- aggregate(Score ~ Group, data = dat, FUN = max)
R> merge(maxs, dat)
  Group Score Info
1     1     3    c
2     2     4    d

You could, of course, stick this into a one-liner (the intermediary step was more for exposition):

merge(aggregate(Score ~ Group, data = dat, FUN = max), dat)

The main reason I used the formula interface is that it returns a data frame with the correct names for the merge step; these are the names of the columns from the original data set dat. We need to have the output of aggregate() have the correct names so that merge() knows which columns in the original and aggregated data frames match.

The standard interface gives odd names, whichever way you call it:

R> aggregate(dat$Score, list(dat$Group), max)
  Group.1 x
1       1 3
2       2 4
R> with(dat, aggregate(Score, list(Group), max))
  Group.1 x
1       1 3
2       2 4

We can use merge() on those outputs, but we need to do more work telling R which columns match up.

  • This is nice. I played around with base R, but couldn't think of the solution. It never crossed my mind to use merge. – Andrie Jun 9 '11 at 8:22
  • Too early for me to think of such a neat answer. – Roman Luštrik Jun 9 '11 at 8:28
  • 1
    @Roman Just one of the many benefits to having a 4 month-old I guess - even the shorter sleep time has its up-side ;-) – Reinstate Monica - G. Simpson Jun 9 '11 at 9:02
  • Does merge also work reliably when Score is float/double? IIRC, "equality" is not trivial with floats. – Florian Jenn Jul 1 '13 at 15:39
  • Both this and the accepted answer solved my problem. This one is a little bit cleaner though, IMO. – killthrush Jun 30 '16 at 12:34

Here is a solution using the plyr package.

The following line of code essentially tells ddply to first group your data by Group, and then within each group returns a subset where the Score equals the maximum score in that group.

ddply(data, .(Group), function(x)x[x$Score==max(x$Score), ])

  Group Score Info
1     1     3    c
2     2     4    d

And, as @SachaEpskamp points out, this can be further simplified to:

ddply(df, .(Group), function(x)x[which.max(x$Score), ])

(which also has the advantage that which.max will return multiple max lines, if there are any).

  • which.max(x$Score) could be used instead of x$Score==max(x$Score). In this example this works well, and in general it is cleaner, but it doesn't always work as desired when there are several maximums (ties). – Reinstate Monica - G. Simpson Jun 9 '11 at 8:24

The plyr package can be used for this. With the ddply() function you can split a data frame on one or more columns and apply a function and return a data frame, then with the summarize() function you can use the columns of the splitted data frame as variables to make the new data frame/;

dat <- read.table(textConnection('Group Score Info
1     1     1    a
2     1     2    b
3     1     3    c
4     2     4    d
5     2     3    e
6     2     1    f'))


    Max = max(Score),
    Info = Info[which.max(Score)])
  Group Max Info
1     1   3    c
2     2   4    d
  • Nice, but I think you'll agree my solution is slightly more general since it will return all columns in the original data.frame. – Andrie Jun 9 '11 at 7:59
  • 1
    Yeah indeed. You could change x$Score==max in which,max if you assume that there is only one maximum per group. – Sacha Epskamp Jun 9 '11 at 8:15
  • Ah, that's nice. I didn't know about which.max – Andrie Jun 9 '11 at 8:17

A late answer, but and approach using data.table

DT <- data.table(dat)

DT[, .SD[which.max(Score),], by = Group]

Or, if it is possible to have more than one equally highest score

DT[, .SD[which(Score == max(Score)),], by = Group]

Noting that (from ?data.table

.SD is a data.table containing the Subset of x's Data for each group, excluding the group column(s)

  • How can you calculate standard deviation only of the last six values, not of the whole column? Do you firstly need to aggregate the data or does there exist something like SQL-style OVER (PARTITION ... BETWEEN 5 PRECEDING AND CURRENT ROW in R? I am trying to answer this here but stuck. – hhh Apr 26 '17 at 9:27
  • 1
    @hhh this looks like rolling sd, please upvote github.com/Rdatatable/data.table/issues/2778 – jangorecki May 27 at 4:48

To add to Gavin's answer: prior to the merge, it is possible to get aggregate to use proper names when not using the formula interface:

aggregate(data[,"score", drop=F], list(group=data$group), mean) 

This is how I baseically think of the problem.

my.df <- data.frame(group = rep(c(1,2), each = 3), 
        score = runif(6), info = letters[1:6])
my.agg <- with(my.df, aggregate(score, list(group), max))
my.df.split <- with(my.df, split(x = my.df, f = group))
my.agg$info <- unlist(lapply(my.df.split, FUN = function(x) {
            x[which(x$score == max(x$score)), "info"]

> my.agg
  Group.1         x info
1       1 0.9344336    a
2       2 0.7699763    e

I don't have a high enough reputation to comment on Gavin Simpson's answer, but I wanted to warn that there seems to be a difference in the default treatment of missing values between the standard syntax and the formula syntax for aggregate.

#Create some data with missing values 
  day hour val
1   1    1   1
2   1    2  NA
3   1    3   3
4   1    3  NA
5   1    4   5

#Standard syntax
  day hour   x
1   1    1   1
2   1    2 NaN
3   1    3   3
4   1    4   5

#Formula syntax.  Note the index for hour 2 has been silently dropped.
aggregate(val ~ hour + day,data=a,mean,na.rm=T)
  hour day val
1    1   1   1
2    3   1   3
3    4   1   5

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