# Grouping in data.table: how to get more than 1 column of results?

I have a `data.table` object like this one

``````library(data.table)

a <- structure(list(PERMNO = c(10006L, 10006L, 10015L, 10015L, 20000L, 20000L),
SHROUT = c(1427L, 1427L, 1000L, 1001L, 200L, 200L),
PRC = c(6.5, 6.125, 0.75, 0.5, 3, 4),
RET = c(0.005, -0.005, -0.001, 0.05, -0.002, 0.0031)),
.Names = c("PERMNO", "SHROUT", "PRC", "RET"),
class = c("data.table", "data.frame"), row.names = c(NA, -6L))

setkey(a,PERMNO)
``````

and I need to perform a number of calculations by `PERMNO`, but here in this example let's supposed they are only 2:

``````mktcap <- a[ , tail(SHROUT,n=1)*tail(PRC,n=1),by=PERMNO]
sqret <- a[, sum(RET^2),by=PERMNO]
``````

which produce

``````> mktcap
PERMNO       V1
[1,]  10006 8740.375
[2,]  10015  500.500
[3,]  20000  800.000

> sqret
PERMNO        V1
[1,]  10006 5.000e-05
[2,]  10015 2.501e-03
[3,]  20000 1.361e-05
``````

I would like to combine the two functions into one, to produce a matrix (or data.table, data.frame, whatever) with 3 columns, the first with the `PERMNO`s, the second with `mktcap` and the third with `sqrt`.

The problem is that this grouping function (i.e. `variable[ , function(), by= ]`) seems to only produce results with two columns, one with the keys and one with results.

This is my attempt (one of many) to produce what I want:

``````comb.fun <- function(datai) {
mktcap <- as.matrix(tail(datai[,1],n=1)*tail(datai[,2],n=1),ncol=1)
sqret <- as.matrix(sum(datai[,3]^2),ncol=1)
return(c(mktcap,sqret))
}

myresults <- a[, comb.fun(cbind(SHROUT,PRC,RET)), by=PERMNO]
``````

which produces

``````     PERMNO           V1
[1,]  10006 8.740375e+03
[2,]  10006 5.000000e-05
[3,]  10015 5.005000e+02
[4,]  10015 2.501000e-03
[5,]  20000 8.000000e+02
[6,]  20000 1.361000e-05
``````

(the results are all there, but they were forced into one column). No matter what I try, I cannot get grouping to return a matrix with more than two columns (or more than one column of results).

Is it possible to get two or more column of results with grouping in `data.table`?

-
+1 for the nicely reproducible example, and for eliciting such a clear explanation of 'macro expressions' from Matthew Dowle. Thanks. –  Josh O'Brien Jun 27 '12 at 22:02

The answer (using `list()` to collect the several desired summary stats) is there in the excellent Examples section of the `?data.table` help file. (It's about 20 lines up from the bottom).

``````out <- a[ , list(mktcap = tail(SHROUT,n=1)*tail(PRC,n=1),
sqret  = sum(RET^2)),
by=PERMNO]

out
#    PERMNO   mktcap     sqret
# 1:  10006 8740.375 5.000e-05
# 2:  10015  500.500 2.501e-03
# 3:  20000  800.000 1.361e-05
``````

Edit:

In the comments below, Matthew Dowle describes a simple way to clean up code in which the `j` argument in calls like `x[i,j,by]` is getting awkwardly long.

Implementing his suggestion on the call above, you could instead do:

``````## 1) Use quote() to make an expression object out of the statement passed to j
mm <- quote(list(mktcap = tail(SHROUT,n=1)*tail(PRC,n=1),
sqret  = sum(RET^2)))

## 2) Use eval() to evaluate it as if it had been typed directly in the call
a[ , eval(mm), by=PERMNO]
#    PERMNO   mktcap     sqret
# 1:  10006 8740.375 5.000e-05
# 2:  10015  500.500 2.501e-03
# 3:  20000  800.000 1.361e-05
``````
-
that's great, but can I have list(function())? I ask that because the example I gave is a very simplified version of what I need to do. I would like to have a function which returns 5 results, and the calculations are not one-line calculations like the ones I provided... –  Vivi Jun 27 '12 at 19:09
You mean something like `a[,{r <- range(PRC); list(min=r[1], max=2[2])}, by=PERMNO]` or `a[,{setNames(as.list(range(PRC)), c("min", "max"))}, by=PERMNO]`? –  Josh O'Brien Jun 27 '12 at 19:15
@Vivi Just to mention another construct as a further option. Instead of `j=myfunction()` (which won't work without laboriously passing in all the arguments) you create an expression (using `quote()` instead of `function()`). It's a bit like a macro. Then it's `j=eval(mymacro)` instead of `j=myfunction()`. See FAQ 1.6 for detailed example. This can be more efficient than a function call, and convenient. When `data.table` sees `j=eval(mymacro)` it knows to find `mymacro` in calling scope so not to be tripped up if a column name happens to be called `mymacro`, too. –  Matt Dowle Jun 27 '12 at 20:50
@MatthewDowle -- That's a nice explanation. For me, it came across much more effectively than FAQ 1.6, which I've read again and again without ever fully grasping. I think making the parallel with functions (which is what we naturally reach for in this situation) really helps. Thanks. –  Josh O'Brien Jun 27 '12 at 21:48
@JoshO'Brien thanks for adding the example for Matthew's comment, it was really helpful. –  Vivi Jun 27 '12 at 23:50

``````comb.fun <- function(a) {
mktcap <- a[ , tail(SHROUT,n=1)*tail(PRC,n=1),by=PERMNO]
sqret <- a[, sum(RET^2),by=PERMNO]

return(merge(mktcap,sqret))
}
``````
-
My issue is that I have a grouping inside a grouping. Your case works, but when it goes to the grouping in the level above, it would transform into 2 columns again... –  Vivi Jun 27 '12 at 19:23
And, one `by` query is much more efficient than two `by` query. –  Matt Dowle Jun 27 '12 at 20:54
Cool. The final few minor bugs are proving tricky to iron out, but hopefully 1.8.1 should be on CRAN soon... –  Matt Dowle Jun 27 '12 at 21:11
@ttmaccer Reading back my question, I agree it wasn't very clear what I was asking. To be honest, I am not sure what I wanted will work with my nested grouping either, but that's what I was trying to do. I didn't know about merge (I always use cbind, rbind or c), so cheers for that. –  Vivi Jun 27 '12 at 23:40