I'm struggling with joining two data sets


  id   name1
   1    a
   2    b
   3    c



  id     name2
  1       c
  2       d

I try to join them by their id


 result <- left_join(df1, df2, by="id")

it gives me the following error

Error: cannot join on columns 'id' x 'id': Can't join on 'id' x 'id' because of incompatible types (factor / integer)

because they have different classes:

 sapply(df1, class)
        id       name1
     "factor"       "factor"    

sapply(df2, class)
        id       name2
     "integer"       "factor"

I tried to change the classes to make them similar

 df1$id <- as.integer (df1$id)

but , it doesn't help to find the common rows in two datasets. ( it can not recognize similar "id"s in df2)

  • Please be more detailed, rather than just saying "this doesn't work". Does it return an error? Is the output different than what you expected (if so, how was it different)? – rosscova Oct 18 '16 at 0:05
  • @rosscova I added the error, it does not give ma an output – MFR Oct 18 '16 at 0:10
  • That looks like the error before you changed the class of df1$id to integer, how about after you made that change? – rosscova Oct 18 '16 at 0:12
  • 1
    Could you try with df1$id <- as.integer (as.character(df1$id)) – noTyme Oct 18 '16 at 0:13
  • use dput to save df1 and df2, so that others will be able to reproduce – user31264 Oct 18 '16 at 0:15
up vote 1 down vote accepted

From help page: as.numeric(levels(f))[f] is recommended instead of as.numeric(as.character(f)).

The issue with factor => numeric/integer conversion has been comprehensively answered by @Joshua Ulrich here.

Seek and ye shall find but user needs to know what to look for to reach the answer.

The Warning message in documentation for ?factor

The interpretation of a factor depends on both the codes and the "levels" attribute. Be careful only to compare factors with the same set of levels (in the same order). In particular, as.numeric applied to a factor is meaningless, and may happen by implicit coercion. To transform a factor f to approximately its original numeric values, as.numeric(levels(f))[f] is recommended and slightly more efficient than as.numeric(as.character(f)).

This step could be avoided by ensuring stringsAsFactors=FALSE while reading input data to side-step conversion of character variables to factors unless they are absolutely essential i.e. when levels of factors are required in analysis.

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