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This is probablly quite simple but would like to be able to summarise some data (mean and median) based upon on random column selection, and for it to be grouped by a different column.

Please see below:

DT = data.table(x=rep(c("a","b","c"),each=3), y=c(1,3,6), v=1:9)
ww <- sample(c("y","v"),1)
DT[,list(avg=mean(ww),med=median(ww)),by="x"]
   x avg med
1: a  NA   y
2: b  NA   y
3: c  NA   y
Warning messages:
1: In `[.data.table`(DT, , list(avg = mean(ww), med = median(ww)),  :
  argument is not numeric or logical: returning NA
2: In `[.data.table`(DT, , list(avg = mean(ww), med = median(ww)),  :
  argument is not numeric or logical: returning NA
3: In `[.data.table`(DT, , list(avg = mean(ww), med = median(ww)),  :
 argument is not numeric or logical: returning NA

If for example ww happened to equal "v" then I would expect the following output

   x avg med
1: a   2   2  
2: b   5   5
3: c   8   8

I think it is just syntax that I need to adjust, but am unsure how to adjust it...Any help would be greatly appreciated...

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Here's another way to do it: DT[,lapply(list(avg=mean,med=median),function(f)f(.SD[[ww]])),by="x"] or with get, as described in the answer below... –  Frank Aug 26 '13 at 17:29

1 Answer 1

up vote 5 down vote accepted

You need to use get:

> DT = data.table(x=rep(c("a","b","c"),each=3), y=c(1,3,6), v=1:9)
> ww <- sample(c("y","v"),1)
> DT[,list(avg=mean(get(ww)),med=median(get(ww))),by="x"]
   x      avg med
1: a 3.333333   3
2: b 3.333333   3
3: c 3.333333   3
> ww
[1] "y"
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Ah! I knew it was simple! –  h.l.m Aug 26 '13 at 16:55
    
@h.l.m, it would be nicer if data.table gave a more descriptive error message in this case. –  Ananda Mahto Aug 26 '13 at 17:02
    
I've heard it's slow, but .SD[[ww]] also works: DT[,list(avg=mean(.SD[[ww]]),med=median(.SD[[ww]])),by="x"] –  Frank Aug 26 '13 at 17:26
    
+1 If the dynamism is needed to fast then an eval+parse solution should be fastest, similar to a dynamic query in SQL. Use of get in j triggers full .SD subsetting (same as use of .SD) because it's difficult for data.table to establish reliably which columns are really needed by j in this case. If DT has many columns (say 50+) and only a few are picked out by get then for speed don't use get (use eval and parse instead to allow data.table optimisation to work). Use verbose=TRUE to reveal what happens. –  Matt Dowle Aug 26 '13 at 17:48

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