If you know in advance the unique values you have in your
Type column you can use
J and then join tables the
data.table way. You should set the key for each table so
data.table knows what to join on, like this...
setkey( dt1 , Type )
setkey( dt2 , Type )
setkey( dt3 , Type )
dt1[ dt2[ dt3[ J( letters[1:4] ) , ] ] ]
# Type x y z
#1: a 1 3 NA
#2: b 2 4 NA
#3: c NA NA 3
#4: d NA NA 4
This shows off
data.table's compound queries (i.e.
dt1[dt2[dt3[...]]] ) which are wicked!
If you don't know in advance the unique values for the key column you can make a list of your tables and use
lapply to quickly run through them getting the unique values to make your
# A simple way to get the unique values to make 'J',
# assuming they are in the first column.
ll <- list( dt1 , dt2 , dt3 )
vals <- unique( unlist( lapply( ll , `[` , 1 ) ) )
# "a" "b" "c" "d"
Then use it like before, i.e.
dt1[ dt2[ dt3[ J( vals ) , ] ] ].