Noticed some weird behavior of data.table, hopefully someone who understands data.table better than I can explain.

Say I have this data.table:

library(data.table)
DT <- data.table(
  C1 = c(rep("A", 4), rep("B",4), rep("C", 4)),
  C2 = c(rep("a", 3), rep("b",3), rep("c",3), rep("d",3)),
  Val = c(1:5, NaN, NaN, 8,9,10,NaN,12))

DT
    C1 C2 Val
 1:  A  a   1
 2:  A  a   2
 3:  A  a   3
 4:  A  b   4
 5:  B  b   5
 6:  B  b NaN
 7:  B  c NaN
 8:  B  c   8
 9:  C  c   9
10:  C  d  10
11:  C  d NaN
12:  C  d  12

Now, in my mind, the following two methods should generate the same results, but they do not.

TEST1 <- DT[, agg := min(Val, na.rm = TRUE), by = c('C1', 'C2')]
TEST1 <- data.table(unique(TEST1[, c('C1','C2','agg'), with = FALSE]))

TEST2 <- DT[, list(agg = min(Val, na.rm = TRUE)), by = c('C1', 'C2')]

TEST1
   C1 C2 agg
1:  A  a   1
2:  A  b   4
3:  B  b   5
4:  B  c   8
5:  C  c   9
6:  C  d  10


TEST2
   C1 C2 agg
1:  A  a   1
2:  A  b   4
3:  B  b   5
4:  B  c NaN
5:  C  c   9
6:  C  d  10

As you can see, using " := " generates a minimum value for (C1 = B, C2 = c) of 8. Whereas the list command results in an NaN. Funnily enough, for (C1 = B,C2 = b) and (C1 = C, C2 = d), which also have NaNs, the list command does produce a value. I believe this to be because in the instance where the NaN is first before a value for a given C1 C2 combination, the NaN results. Whereas in the other two examples the NaN comes after a value.

Why does this occur?

I note that if the NaN are replaced with NA then values are generated with no problems.

  • 1
    no idea but DT[, list(agg = min(.SD$Val, na.rm = TRUE)), by = c('C1', 'C2')] also works – rawr Dec 4 '15 at 6:18
  • 1
    Or DT[, list(agg=min(c(Val), na.rm=TRUE)), by = .(C1, C2)] It is a bit strange, but the equivalent step in dplyr works after converting to data.frame. – akrun Dec 4 '15 at 6:21
  • 1
    You should definitely report a bug. I suspect that this is due to the "internal" implementation of data.table min function. When inside a data.table operation, some functions (like min, max and sum) are replaced by faster data.table versions. If you call explicitly the base function, you get the correct output: DT[, list(agg = base::min(Val, na.rm = TRUE)), by = c('C1', 'C2')]. No idea why data.table seems to revert to base::min when used in combination with :=. – nicola Dec 4 '15 at 7:53
  • Yes, it's a bug in data.table's optimized version of min and should be reported. To turn that behavior off, use options(datatable.optimize=1). After making a fix, I'm sure one of the data.table authors will post an answer here, as they did last time stackoverflow.com/q/27987424/1191259 – Frank Dec 4 '15 at 12:49
  • Nicola is spot on. Please file as bug. @nicola, what do you mean with your last sentence? – Arun Dec 4 '15 at 16:40
up vote 7 down vote accepted

Fixed this issue, #1461 just now in devel, v1.9.7 with commit 2080.

require(data.table) # v1.9.7, commit 2080+
DT <- data.table(
     C1 = c(rep("A", 4), rep("B",4), rep("C", 4)),
     C2 = c(rep("a", 3), rep("b",3), rep("c",3), rep("d",3)),
     Val = c(1:5, NaN, NaN, 8,9,10,NaN,12))

DT[, list(agg = min(Val, na.rm = TRUE)), by = c('C1', 'C2')]
#    C1 C2 agg
# 1:  A  a   1
# 2:  A  b   4
# 3:  B  b   5
# 4:  B  c   8
# 5:  C  c   9
# 6:  C  d  10

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.