# subsetting a data frame for n rows by group and by ordering a variable

I would like to subset a data frame for n rows, which are grouped by a variable and are sorted descending by another variable. This would be clear with an example:

``````d1 <- data.frame(Gender=c('M', 'M', 'F', 'F', 'M', 'M', 'F','F'), Age=c(15,38,17,35,26,24,20,26))
``````

I would like to get 2 rows, which are sorted descending on Age, for each Gender. The desired output is:

``````Gender  Age
F   35
F   26
M   38
M   26
``````

I looked for order, sort and other solutions here, but could not find an appropriate solution to this problem. I appreciate your help.

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Do you only want the largest two ages for each gender? –  kmm May 20 '11 at 17:47

One solution using `ddply()` from `plyr`

``````require(plyr)
ddply(d1, "Gender", function(x) head(x[order(x\$Age, decreasing = TRUE) , ], 2))
``````
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I didn't see your answer before posting mine! Much better. –  Manoel Galdino May 20 '11 at 18:13
that worked beautifully! I can even modify the "n" value. Thanks. –  karlos May 20 '11 at 18:24
+1 still works if there are ties. –  Brandon Bertelsen May 20 '11 at 18:33
@brandon and it also works even if your n is more than the actual number of rows in a group. So if you have 6 females and 5 males, and you change n to 5, you will get top 5 rows for females and all for males. This is exactly what I wanted –  karlos May 20 '11 at 18:39

With data.table package

``````require(data.table)
dt1<-data.table(d1)# to speedup you can add setkey(dt1,Gender)
dt1[,.SD[order(Age,decreasing=TRUE)[1:2]],by=Gender]
``````
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Instead of `order(Age,decreasing=TRUE)` can write `order(-Age)`. That way you can order by several columns each in a different direction; e.g., `order(-Age,+Height,-Weight)`. –  Matt Dowle May 8 '12 at 16:22

I'm sure there is a better answer, but here is one way:

``````require(plyr)
ddply(d1, c("Gender", "-Age"))[c(1:2, 5:6),-1]
``````

If you have a larger data frame than the one you provided here and don't want to inspect visually which rows to select, just use this:

``````new.d1=ddply(d1, c("Gender", "-Age"))[,-1]
pos=match('M',new.d1\$Gender) # pos wil show index of first entry of M
new.d1[c(1:2,pos:(pos+1)),]
``````
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thanks for your solution, Manoel, but I did not try it as chase' solution worked for me. –  karlos May 20 '11 at 18:25
@karlos, of course. His solution is better than mine. In fact, yersterday he just helped me with a question and he used plyr as well. Not surprising, he used 'ddply' better than me. –  Manoel Galdino May 20 '11 at 18:35

It is even easier than that if you just want to do the sorting:

``````d1 <- transform(d1[order(d1\$Age, decreasing=TRUE), ], Gender=as.factor(Gender))
``````

you can then call:

``````require(plyr)
d1 <- ddply(d1, .(Gender), head, n=2)
``````

to subset the top two of each Gender subgroup.

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