I have two data.tables, DT and L:
> DT = data.table(x=rep(c("a","b","c"),each=3), y=c(1,3,6), v=1:9,key="x")
> L=data.table(yv=c(1L:8L,12L),lu=c(letters[8:1],letters[12]),key="yv")
> DT
x y v
1: a 1 1
2: a 3 2
3: a 6 3
4: b 1 4
5: b 3 5
6: b 6 6
7: c 1 7
8: c 3 8
9: c 6 9
> L
yv lu
1: 1 h
2: 2 g
3: 3 f
4: 4 e
5: 5 d
6: 6 c
7: 7 b
8: 8 a
9: 12 l
I would like to independently look up the corresponding value of lu from L for column y and for column v in DT. The following syntax provides the correct result, but is cumbersome to generate and then understand at a glance later:
> L[setkey(L[setkey(DT,y)],v)][,list(x,y=yv.1,v=yv,lu.1=lu.1,lu.2=lu)]
x y v lu.1 lu.2
1: a 1 1 h h
2: a 2 3 g f
3: a 3 6 f c
4: b 4 1 e h
5: b 5 3 d f
6: b 6 6 c c
7: c 7 1 b h
8: c 8 3 a f
9: c 9 6 NA c
(Edit: original post had L[setkey(L[setkey(DT,y)],v)][,list(x,y=yv,v=yv.1,lu.1=lu,lu.2=lu.1)] above, which incorrectly mixed up the y and v columns and looked up values.)
In SQL this would be simple/straightforward:
SELECT DT.*, L1.lu AS lu1, L2.lu AS lu2
FROM DT
LEFT JOIN L AS L1 ON DT.y = L1.yv
LEFT JOIN L AS L2 ON DT.v = L2.yv
Is there a more elegant way to use data.table to perform multiple joins? Note that I’m joining one table to another table twice in this example, but I am also interested in joining one table to multiple different tables.
Great question. One trick is that
idoesn’t have to be keyed. Onlyxmust be keyed.There might be better ways. How about this:
or, to illustrate, this is the same :
mergecould also be used, if the following feature request was implemented :FR#2033 Add by.x and by.y to merge.data.table