# Collapsing data frame by selecting one row per group

I'm trying to collapse a data frame by removing all but one row from each group of rows with identical values in a particular column. In other words, the first row from each group.

For example, I'd like to convert this

``````> d = data.frame(x=c(1,1,2,4),y=c(10,11,12,13),z=c(20,19,18,17))
> d
x  y  z
1 1 10 20
2 1 11 19
3 2 12 18
4 4 13 17
``````

Into this:

``````    x  y  z
1   1 11 19
2   2 12 18
3   4 13 17
``````

I'm using aggregate to do this currently, but the performance is unacceptable with more data:

``````> d.ordered = d[order(-d\$y),]
> aggregate(d.ordered,by=list(key=d.ordered\$x),FUN=function(x){x[1]})
``````

I've tried split/unsplit with the same function argument as here, but unsplit complains about duplicate row numbers.

Is rle a possibility? Is there an R idiom to convert rle's length vector into the indices of the rows that start each run, which I can then use to pluck those rows out of the data frame?

Maybe `duplicated()` can help:

``````R> d[ !duplicated(d\$x), ]
x  y  z
1 1 10 20
3 2 12 18
4 4 13 17
R>
``````

Edit Shucks, never mind. This picks the first in each block of repetitions, you wanted the last. So here is another attempt using plyr:

``````R> ddply(d, "x", function(z) tail(z,1))
x  y  z
1 1 11 19
2 2 12 18
3 4 13 17
R>
``````

Here plyr does the hard work of finding unique subsets, looping over them and applying the supplied function -- which simply returns the last set of observations in a block `z` using `tail(z, 1)`.

• So then you need to simply add a 'processing step' to create a factor variable over which plyr can loop. It can all be done with indexing commands, give it a try. And by the way, you are inconsistent between your text (saying first row selected) and example (showing second row). Apr 13, 2010 at 2:51
• By the way, cross-posting between r-help and here is also somewhat poor style. You got good answers at r-help, so why don't you study them? Apr 13, 2010 at 2:59
• My pleasure. As a matter of common best practices here on StackOverflow, you should accept one post as the solutions (if you feel it provides one) and vote each helpful post up by clicking on the up arrow. That is how the scoring works here. Apr 13, 2010 at 13:36

Just to add a little to what Dirk provided... `duplicated` has a `fromLast` argument that you can use to select the last row:

``````d[ !duplicated(d\$x,fromLast=TRUE), ]
``````
• Hi Ian -- unfortunately James never really made a clear case as to whether he wanted first or last and contradicts himself in the post ... but your hint about fromLast is a good one! Apr 13, 2010 at 12:14
• thanks, that works like a charm. Whether its first or last I needed was really up to the ordering, and with fromLast I can attack it either way Apr 13, 2010 at 12:54
• I suggested the same thing and you shot it down on on the grounds of 'prefer all columns'. How come that no longer matters? Apr 13, 2010 at 13:35
• Sorry, Dirk, I misunderstood how duplicated works at the time Apr 15, 2010 at 15:17

Here is a `data.table` solution which will be time and memory efficient for large data sets

``````library(data.table)
DT <- as.data.table(d)           # convert to data.table
setkey(DT, x)                    # set key to allow binary search using `J()`
DT[J(unique(x)), mult ='last']   # subset out the last row for each x
DT[J(unique(x)), mult ='first']  # if you wanted the first row for each x
``````
• But if all that is needed is the last row in each group, then `DT[!duplicated(x,fromLast=TRUE)]` is likely faster than the total time of `setkey` + join, and with some syntactic sugar advantage of avoiding variable name repetition of `DT` (i.e. just `x` not `DT\$x`). Sep 19, 2012 at 8:43
• Using the row index would speed things up i geuss, DT[ DT[, .I[.N] , by = x]\$V1]. Check stackoverflow.com/questions/19424762/… . Thank to @Simono101 Nov 20, 2013 at 10:36
• `unique(DT,by="x",fromLast=TRUE)` is now simpler and faster than `DT[!duplicated(x,fromLast=TRUE)]` and `DT[J(unique(x)), mult ='last']` Sep 2, 2014 at 1:50

There are a couple options using `dplyr`:

``````library(dplyr)
df %>% distinct(x, .keep_all = TRUE)
df %>% group_by(x) %>% filter(row_number() == 1)
df %>% group_by(x) %>% slice(1)
``````

You can use more than one column with both `distinct()` and `group_by()`:

``````df %>% distinct(x, y, .keep_all = TRUE)
``````

The `group_by()` and `filter()` approach can be useful if there is a date or some other sequential field and you want to ensure the most recent observation is kept, and `slice()` is useful if you want to avoid ties:

``````df %>% group_by(x) %>% filter(date == max(date)) %>% slice(1)
``````