How do I join multiple dataframes in R using dplyr ?

new <- left_join(x,y, by = "Flag")

this is the code I am using to left join x and y the code doesn't work for multiple joins

new <- left_join(x,y,z by = "Flag")

You can use nested left_join

 left_join(x, y, by='Flag') %>%
                left_join(., z, by='Flag') 

Or another option would to place all the datasets in a list and use merge from base R with Reduce

Reduce(function(...) merge(..., by='Flag', all.x=TRUE), list(x,y,z))

Or we have join_all from plyr. Here also, we place the dataframes in a list and use the argument type='left' for left join.

join_all(list(x,y,z), by='Flag', type='left')
  • 7
    I guess you can just embed left_join into Reduce too, but it seems this was already asked a few times yesterday, no? – David Arenburg Aug 18 '15 at 7:47
  • @DavidArenburg Yes, it can be and is useful for multiple datasets. I just thought to use the %>% . – akrun Aug 18 '15 at 7:49
  • 4
    The pipe option and reduce with join_left are much faster (1.8s) (~10x faster in my case- conditional to your data of course etc..). Reduce with merge is very slow (16s) but if you replace merge with left_join then you have comparable speed as with the pipe (wee bit slower 1.9s on average but not significant). The slowest is join_all from plyr (22s). – R. Prost Feb 8 '18 at 7:40
  • @R.Prost I think dplyr is more optimized for those joins – akrun Feb 8 '18 at 7:47
  • this is great... it seems obvious that the . in the second join is a placeholder for the first join, but can anyone explain that in functional programming terms? why is the . deemed as the placeholder? Is this something to do with NSE? – dre Sep 14 '19 at 13:10

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