# Calculating summary statistic across subsets of dataset [What is the equivalent of Stata's “bysort” in R?]

I have been programming in Stata the last few years and have recently switched to R about 4 months ago.

I have data in the following format:

``````       popname sex year age COUNTRY
329447     AUS   f 1921  23     AUS
329448     AUS   f 1921  24     AUS
329449     AUS   f 1921  25     AUS
329450     AUS   f 1921  26     AUS
329451     AUS   f 1921  27     AUS
329452     AUS   f 1921  28     AUS
...
329532     AUS   f 1922  23     AUS
329533     AUS   f 1922  24     AUS
329534     AUS   f 1922  25     AUS
...        ...   .  ..   ..     ...
297729     BLR   f 1987  59     BLR
297730     BLR   f 1987  60     BLR
297731     BLR   f 1987  61     BLR
...
291941     BLR   m 1973  71     BLR
291942     BLR   m 1973  72     BLR
291993     BLR   m 1974  23     BLR
``````

I would like to create a new summary variable called Max.Age (which calculates the maximum Age for a given subgroup defined by {popname, sex,year) in the existing dataset as follows:

``````   popname sex year age COUNTRY   max.age
329447     AUS   f 1921  23     AUS   72
329448     AUS   f 1921  24     AUS   72
329449     AUS   f 1921  25     AUS   72
329450     AUS   f 1921  26     AUS   72
329451     AUS   f 1921  27     AUS   72
329452     AUS   f 1921  28     AUS   72
...
329532     AUS   f 1922  23     AUS   75
329533     AUS   f 1922  24     AUS   75
329534     AUS   f 1922  25     AUS   75
...        ...   .  ..   ..     ...
297729     BLR   f 1987  59     BLR   87
297730     BLR   f 1987  60     BLR   87
297731     BLR   f 1987  61     BLR   87
...
291941     BLR   m 1973  71     BLR   78
291942     BLR   m 1973  72     BLR   78
291993     BLR   m 1974  23     BLR   78
``````

To do this in Stata, one would use the egen command with the by command as follows:

``````by State City Day, sort:
egen cnt=seq(), from(23) to(72) block(1);
``````

I tried doing this in R, using the doBy package. Here's the code I wrote:

``````IDB <- orderBy(~popname+sex+year+age, data=IDB)
v<-lapplyBy(~sex+year, data=IDB, function(d) c(NA,max(d\$age)))
IDB\$Max.age <- unlist(v)
``````

This doesn't work, as lapplyBy returns an aggregated dataset of smaller length than the original dataset (IDB).

Could someone kindly point me in the right direction on how to essentially implement a "by | egen" type Stata code in R?

Thanks

-

One thing you'll find with R is that there isn't just one way to do things. One way is via the `ave` function.

``````IDB\$max.age <- ave(IDB\$age, IDB\$popname, IDB\$sex, IDB\$year, FUN=max)
``````
-

I would recommend using `ddply` from the `plyr` package (although there are many ways to do something like this). Assuming your dataframe is called `dat`:

``````result <- ddply(dat,.(popname,sex,year),.fun = function(x){
x\$max.age <- max(x\$age,na.rm=TRUE)
return(x)})
``````

The anonymous function in the ddply adds a column to each piece with the max age for that piece.

-
+1 for suggesting ddply. That's what I'd suggest, but you did first. –  Manoel Galdino Jun 23 '11 at 4:36

I found the Stata egen documentation to be completely opaque when I tried reading it a couple of years ago, so I will not be giving you a general answer. The function to use for this purpose (returning a vector of same length from a function applied with groups is `ave()`:

``````dfrm\$max.age <- with( dfrm, ave(age, list(popname, sex,year), FUN=max, na.rm=TRUE) )
``````

You do get warnings but the operation succeeds. Perhaps the cross-product of the grouping variables creates empty categories that are later discarded. They also occur with Joshua's version, and removing the na.rm=TRUE does not change the warnings:

``````1: In FUN(X[[20L]], ...) : no non-missing arguments to max; returning -Inf
``````
-
I believe the warnings are because `ave` uses `interaction` and some of the interactions between the groups have no observations. –  Joshua Ulrich Jun 23 '11 at 13:13