7

I have two data.tables: samples, resources

resources is connected with samples via primary and secondary ids. I want to combine the information from the resources with the sample-table first via the primary id, and only if this produces NA, then I want to resort to the secondary resources from the same table (within one data.table command chain).

# resources:
   primary secondary info
1:      17        42  "I"
2:      18        NA  "J"
3:      19        43  "K"

# samples:
   name primary secondary
1:  "a"      17        55
2:  "b"       0        42
3   "c"      18        42

The desired result would be:

# joined tables:
   name info  # primary secondary
1:  "a"  "I"
2:  "b"  "I"
3:  "c"  "J"

The first join via primary is easy, it produces

# Update:
samples <- data.table(name = letters[1:3], 
                      primary = c(17, 0, 18), 
                      secondary = c(55, 42, 42))
resources <- data.table(primary = 17:19, 
                        secondary = c(42, NA, 43), 
                        info = LETTERS[9:11])
# first join:
setkey(samples, primary)
setkey(resources, primary)
samples[resources]

   name info  # primary secondary
1:  "a"  "I"
2:  "b"   NA
3:  "c"  "J"

But then? I need to re-key samples with setkey(samples, secondary), right? And then subset to only those rows that produces NAs. But all this is not really possible within one command chain (and imagine there were more than two criteria...). How can I achieve this more succinctly?

... updated with code for the data.tables.

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  • 6
    Perhaps make easily reproducible by including code that constructs samples and resources? Apr 23, 2015 at 14:04
  • not data.table friendly but just in case it is helpful: stackoverflow.com/questions/11369837/…
    – npjc
    Apr 23, 2015 at 19:07
  • 2
    wanting to do it in one command chain is misguided
    – eddi
    Apr 24, 2015 at 2:03
  • @eddi -- Yes indeed. I think that's a key observation. Apr 24, 2015 at 3:23
  • 1
    @JanGorecki -- Sounds like you've got a regular idiom that works well for you, so I'd suggest you just stick with that! I happen to find the 'smaller chunks' approach easier to parse --- but only because I'm more used to it, and see no inherent virtue in getting everything on a single, possibly very long, line. Apr 26, 2015 at 22:35

3 Answers 3

5

While you could do it on a single line, I think that obscures the meaning of what you do, makes things incredibly hard to read/understand/debug/remember what the hell you did in a month, and is simply a bad idea.

Smaller, much more easily digestible chunks are the way to go imo:

setkey(samples, primary)
setkey(resources, primary)
samples[resources, info := i.info]

setkey(samples, secondary)
setkey(resources, secondary)
samples[resources, info := ifelse(is.na(info), i.info, info)]

samples
#   name primary secondary info
#1:    b       0        42    I
#2:    c      18        42    J
#3:    a      17        55    I

# keep going with tertiary and so on if you like

As @nachti pointed out in the comments, you might need to add allow.cartesian=TRUE for versions before 1.9.5 depending on your data.

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  • 3
    I get that's it's cool, when you first discover chaining/piping, to just do a ton of things on one line, but after that initial excitement wears off, you need to scale back and realize that you don't actually want your entire script on a single line.
    – eddi
    Apr 24, 2015 at 2:12
  • You have to add by = .EACHI since dt 1.9.4: samples[resources, info := ifelse(is.na(info), i.info, info), by = .EACHI] For more information see github.com/Rdatatable/data.table/blob/master/README.md
    – nachti
    Apr 24, 2015 at 6:49
  • @nachti no, that's incorrect - the above was run using 1.9.5 (the "have to" part is incorrect - you can add it, but that won't change the result and it may or may not result in a performance difference - I'm not sure which way it'll go)
    – eddi
    Apr 24, 2015 at 6:50
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    in 1.9.4 i get Error in vecseq(f__, len__, if (allow.cartesian || notjoin) NULL else as.integer(max(nrow(x), : Join results in 4 rows; more than 3 = max(nrow(x),nrow(i)). Check for duplicate key values in i, each of which join to the same group in x over and over again. If that's ok, try including j and dropping by (by-without-by) so that j runs for each group to avoid the large allocation. If you are sure you wish to proceed, rerun with allow.cartesian=TRUE. Otherwise, please search for this error message in the FAQ, Wiki, Stack Overflow and datatable-help for advice.
    – nachti
    Apr 24, 2015 at 6:52
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    Good point @eddi! allow.cartesian = TRUE is nearly twice as fast as by = .EACHI. See also github.com/nachti/datatable_test/blob/master/staggered_join.R for a benchmark.
    – nachti
    Apr 24, 2015 at 7:30
2

This would be one chain with 2 calls to resources, one of them re-setkey behind the scene.

library(data.table)
samples <- data.table(name = letters[1:3], 
                      primary = c(17, 0, 18), 
                      secondary = c(55, 42, 42))
resources <- data.table(primary = 17:19, 
                        secondary = c(42, NA, 43), 
                        info = LETTERS[9:11])
setkey(samples, primary)
setkey(resources, primary)
samples[resources, info := i.info
        ][, .(name, info),, secondary
          ][resources[, info,, secondary], info := ifelse(is.na(info), i.info, info)
            ][, secondary := NULL]

As you are asking about more complicated examples. It's worth to note the data.table queries can be easily managed as modules by preparing sub-query arguments in advance. They can be later easily conditionally managed. See below example.

lkp2 <- quote(resources[, info,, secondary])
lkp2_formula <- quote(info := ifelse(is.na(info), i.info, info))
setkey(samples, primary)
samples[resources, info := i.info
        ][, .(name, info),, secondary
          ][eval(lkp2), eval(lkp2_formula)
            ][, secondary := NULL]

If you heavily rely on data.table chaining processes you may find dtq package useful.

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    I like the suggestion to predefine the i and the j commands separately, this might help keep the code easier to read in more complicated cases. I will combine this strategy with the suggestions from @eddi and @nachti.
    – Wordsmyth
    Apr 24, 2015 at 7:42
1

I think it's too tricky to do it within one command chain, but I've a solution for you:

### First step
samples[resources[samples, nomatch = 0], info := info]
samples

   name primary secondary info
1:    b       0        42   NA
2:    a      17        55    I
3:    c      18        42    J

### Second step
setkey(samples, secondary)
setkey(resources, secondary)
## create new column info1
samples[resources[samples[is.na(info)],
                  list(info1 = unique(info)), by = .EACHI],
        info1 := info1]
## merge it to samples, where info is NA
samples[is.na(info), info := info1]
## remove info1 (and maybe other unused columns)
samples[, info1 := NULL]
## sort samples by name
setkey(samples, name)
samples

   name primary secondary info
1:    a      17        55    I
2:    b       0        42    I
3:    c      18        42    J

HTH
~g

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