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I have 5 data.frames with 10 rows, which correspond to 10 politicians. I use table() to count all the political groups in each data.frame.

So I get 10 tables like this :

grpol.1 <- table(df1$group_pol)
grpol.1
  NI RRDP  SRC  UDI  UMP 
  1    2   3    3    1 
grpol.2
  RRDP  UDI  ECOLO 
  5       4      1 

Now, I would like to concatenate (by column) all of these tables into just one data.frame. There are 7 political groups in all. Note all these tables do not have the same number of columns.

I would like to obtain something like:

 group_pol  grpol.1  grpol.2  ... grpol.5
1 NI              1        0
2 RRDP            2        5
3 SRC             3        0
4 UDI             3        4 
5 UMP             1        0
6 GDR             0        0
7 ECOLO           0        1

Normally, in this case, I would use merging. However it seems impossible to convert tables to data.frames in order to merge. So, what is the alternative to concatenate tables which do not have similar columns ?

Thanks for help,

share|improve this question
    
There is an as.data.frame method for tables. I get the idea this might be simpler taking a different route. Why not offer a fer example data objects to work with? –  BondedDust Sep 12 '13 at 13:22
    
if you don't want to use merge, maybe you can use match? –  Ananda Mahto Sep 12 '13 at 13:23
    
also if you share an example of the original data.frames there might be a different, more direct approach to begin with. –  Ananda Mahto Sep 12 '13 at 13:26
    
What you should be doing is to rbind all data.frames with an extra id column (unique to each data.frame), and then "cast" it (using dcast from reshape2 with fun.aggregate=length). –  Arun Sep 12 '13 at 15:08
    
Whenever you find yourself naming variables like df1, df2, df3, df4 and df5 you are in fact making a fake list. R however has no idea that they belong together and can't hardly do anything to help you work with them. Make a real list instead and you can do much more with much less code. I regularly hold computer exercises for molecular biology majors and see all the time, but never let it pass. I don't mean to be anal, but it will save you lots of time and agony. –  Backlin Sep 12 '13 at 19:12

1 Answer 1

up vote 4 down vote accepted

I'll start by making some example data

grpol.1 <- as.table(c(a=1,b=2, d=3, g=4))
grpol.2 <- as.table(c(b=1, c=2, e=3, f=4))
grpol.3 <- as.table(c(b=198, d=281, e=-12, g=612))

The primitive way of solving it would be

merge(as.data.frame(grpol.1),
      merge(as.data.frame(grpol.2),
            as.data.frame(grpol.3), by="Var1", all=TRUE),
      by="Var1", all=TRUE)

Giving you the following output

  Var1 Freq Freq.x Freq.y
1    a    1     NA     NA
2    b    2      1    198
3    d    3     NA    281
4    g    4     NA    612
5    c   NA      2     NA
6    e   NA      3    -12
7    f   NA      4     NA

However, if you have a lot of tables it is better to keep them in a list so you don't need to write out all their names every time you want to access them.

l <- list(grpol.1, grpol.2, grpol.3)
l <- lapply(l, as.data.frame)
f <- function(x, y) merge(x, y, by="Var1", all=TRUE)
Reduce(f, l)

This is especially important if you want you code to work with an arbitrary number of tables. The next time you run your code you might have 6 tables instead of 5, who knows?

share|improve this answer
    
It was so simple... sorry. :) Thanks a lot, –  jonathan Sep 13 '13 at 14:07
    
... the first solution is perfect. I keep the second one for later, it could be precious in deed. –  jonathan Sep 13 '13 at 14:13
    
Glad it worked out for you! –  Backlin Sep 14 '13 at 8:14

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