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I'm using data.table to aggregate values, but I'm finding that when the "by" variable has a level not present in the aggregation, it is omitted, even if it is specified in the factor levels.

The code below generates a data.table with 6 rows, the last two of which only have one of the two possible levels for f2 nested within f1. During aggregation, the {3,1} combination is dropped.

set.seed(1987)
dt <- data.table(f1 = factor(rep(1:3, each = 2)),
                 f2 = factor(sample(1:2, 6, replace = TRUE)),
                 val = runif(6))

str(dt)

Classes ‘data.table’ and 'data.frame':  6 obs. of  3 variables:
 $ f1 : Factor w/ 3 levels "1","2","3": 1 1 2 2 3 3
 $ f2 : Factor w/ 2 levels "1","2": 1 2 2 1 2 2
 $ val: num  0.383 0.233 0.597 0.346 0.606 ...
 - attr(*, ".internal.selfref")=<externalptr> 

dt

   f1 f2       val
1:  1  1 0.3829077
2:  1  2 0.2327311
3:  2  2 0.5965087
4:  2  1 0.3456710
5:  3  2 0.6058819
6:  3  2 0.7437177

dt[, sum(val), by = list(f1, f2)] # output is missing a row

   f1 f2        V1
1:  1  1 0.3829077
2:  1  2 0.2327311
3:  2  2 0.5965087
4:  2  1 0.3456710
5:  3  2 1.3495996

# this is the output I'm looking for:
   f1 f2        V1
1:  1  1 0.3829077
2:  1  2 0.2327311
3:  2  2 0.5965087
4:  2  1 0.3456710
5:  3  1 0.0000000 # <- the missing row from above
6:  3  2 1.3495996

Is there a way to achieve this behavior?

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marked as duplicate by eddi Jun 17 '14 at 15:42

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

1 Answer 1

Why do you expect that data.table will compute sums for all combinations of f1 and f2?

If this what you want you should add missings rows to the original data before grouping sum. For example:

setkey(dt, f1, f2)
# omit "by = .EACHI" in data.table <= 1.9.2
dt[CJ(levels(f1), levels(f2)), sum(val, na.rm=T),
   allow.cartesian = T, by = .EACHI]
##     f1 f2        V1
## 1:  1  1 0.3829077
## 2:  1  2 0.2327311
## 3:  2  1 0.3456710
## 4:  2  2 0.5965087
## 5:  3  1 0.0000000   ## <- your "missing row" :)
## 6:  3  2 1.3495996
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I expected this behavior because I've seen it in other functions. For example: table(dt$f1, dt$f2) produces the results for all combinations. –  Jeff Keller Jun 17 '14 at 14:33

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