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I am using the data.table package to complete some analyses. One of the steps I am taking involves using the by = function to obtain aggregate statistics. However, the aggregates must be calculated on the unique results in each by subset. I have been using unique and keys to ensure that each by group consists of distinct records. Something vaguely like the below:

dt_new <- dt_old[,uFunc_MyFunction(x = unique(.SD)),by = grouping_var]

I noticed that the key on .SD seemed to vary based on the key set for dt_old and the by = statement. Obviously, this was having an effect on whether my resulting subsets were unique or not.

I wanted to get some clarity, so I wrote the below.

library(data.table)
set.seed(1554)
dt_example <- data.table(id = 1:50,
                         site = sample(x = c("A","B","C"),
                                       size = 50,
                                       replace = TRUE,
                                       prob = c(0.4,0.4,0.2)),
                         group = sample(x = c("Eta","Mu","Omicron","Psi"),
                                        size = 50,
                                        replace = TRUE),
                         team = sample(x = 1:3,
                                       size = 50,
                                       replace = TRUE,
                                       prob = c(0.2,0.3,0.5)))

setkey(x = dt_example,
       group,
       team)

> dt_example[,as.list(key(.SD)),by = site]
   site    V1   V2
1:    B group team
2:    A group team
3:    C group team

setkey(x = dt_example,
       site,
       group,
       team)

> dt_example[,as.list(key(.SD)),by = site]
Empty data.table (0 rows) of 1 col: site

What I am trying to understand is why, in the first version, the key for .SD is consistent, while, in the second version, .SD had no key at all. I think it has something to do with the fact that the by = column isn't directly included in .SD, which is breaking the key, but I wanted to confirm my logic.

So, my question is this: why does the subset of a data table, .SD, have no key when one of the columns which comprises the key of the parent data table is used as a by grouping variable?

  • 1
    This question is really just an FR. – eddi Jun 8 '16 at 17:43
  • @eddi What is an FR? – TARehman Jun 8 '16 at 17:43
  • FR = Feature Request – Jaap Jun 8 '16 at 17:44
  • 1
    Why would you run unique(.SD) by group in the first place? Feels very inefficient. Can't you just do data_new <- unique(dt_old) and then run your function by group? – David Arenburg Jun 8 '16 at 17:58
  • @DavidArenburg Sure, but that wouldn't answer my question about how the key gets passed between .SD and the parent. Also, if you have a lot of data, you might be loathe to create a second copy with just the uniques, which I think would happen in this case. – TARehman Jun 8 '16 at 18:00
3

In this case, since it's sorted by site, group, team, while grouping by site, the key could be retained for group, team as the order would be maintained. The simplest answer is we seem to have missed this case. Could you please file an issue with just a link to this post?

As a work around, you can use the by argument in unique method for data.tables to specify the columns.

And as David pointed out, using unique(.SD) on every group seems unnecessary, but that's probably for another Q.

  • I'll log an issue momentarily. And I do agree that unique(.SD) is an unusual use case. I wouldn't really even expect it to be "fixed" - just was curious what happened under the hood. – TARehman Jun 9 '16 at 16:35

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