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I would like to combine the columns after merging two dataframes. Right now, I am writing ifelse statements to get a unified column for each variable. I would like a function to chose what data frame (i.e. x) should overwrite the other column.

df$source<-ifelse(df$source.x=='',df$source.y,df$source.x)
df$id<-ifelse(df$id.x=='',df$id.y,df$id.x)
df$profile_url<-ifelse(df$profile_url.x=='',df$profile_url.y,df$profile_url.x)

Any help would be appreciated

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This is just a bit unclear... For the above columns, you want to have df take on the values from y iff x is a blank string, otherwise take on the values from x? – Ricardo Saporta Feb 24 '13 at 6:26
1  
How do you do your merge? can you give the context? and please provide a reproducible example . – agstudy Feb 24 '13 at 6:26
up vote 2 down vote accepted

This should hopefully do it. (note, hasn't been tested as there's no sample data)

fixedColumn <- function(colm, myDF, keepx=TRUE) { 
  x <- myDF[[paste0(colm, ".x")]]
  y <- myDF[[paste0(colm, ".y")]]

  if(keepx)
    return(ifelse(x=='', y, x))
  # else  
  ifelse(y=='', x, y)
}

# columns that need fixing.  Don't include the suffixes
cols <- c("source", "id", "url")

# fix the .x columns
df[, paste0(cols, ".x")]  <- sapply(cols, fixedColumn, df)

# delete the .y columns
for (cc in paste0(cols, ".y"))
  df[[cc]] <- NULL

Using @agstudy's sample data:

> df
  Row.names id.x source.x url.x
1         1    2        2     3
2         2    3        1     3
3         3    3        1     2
4         4    3        2     2
5         5    3        2     2
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+1; Might be a little faster to just do this: x <- myDF[[paste0(colm, ".x")]]; x[x==''] <- myDF[[paste0(colm, ".y")]][x==''] – 42- Feb 24 '13 at 6:35
    
but here this code will not work I think! "colm" is missing in your sapply, isn'it? – agstudy Feb 24 '13 at 6:42
    
@agstudy, good catch, thanks! I fixed the sapply statement and the function definition to match. – Ricardo Saporta Feb 24 '13 at 6:55
    
@Dwin, great suggestion. I left the assignment to y in there simply to allow for the option of keeping either column as the dominant. – Ricardo Saporta Feb 24 '13 at 6:56
    
@RicardoSaporta what is myDF here? You can use my data to test your code. – agstudy Feb 24 '13 at 7:42

To avoid this step of swapping columns , you can use SQL via the sqldf package to swap columns (and if your real problem involves merges that can be done at the same time). Using CASE ... WHEN syntax you write the same if/else logic we have:

library(sqldf)
colnames(df) <- gsub('[.]','_',colnames(df))
sqldf(" SELECT 
             CASE  url_x    WHEN '' THEN url_y    ELSE url_x END as url ,
             CASE  source_x WHEN '' THEN source_y ELSE source_x END as source,
             CASE  id_x  WHEN '' THEN id_y ELSE id_x END as id 
      FROM df")

Reproducible Example

We test it with a reproducible example:

# create some data
set.seed(1234)
df1 <- matrix(sample(c('a','b','d',''),3*5,rep=T),ncol=3)
df2 <- matrix(sample(c('c','b','','a'),3*5,rep=T),ncol=3)
colnames(df1) <- c('id','source','url')
colnames(df2) <- c('id','source','url')
df <- merge(df1,df2,by=0)   

# run
library(sqldf)
colnames(df) <- gsub('[.]','_',colnames(df))
sqldf(" SELECT 
             CASE  url_x    WHEN '' THEN url_y    ELSE url_x END as url ,
             CASE  source_x WHEN '' THEN source_y ELSE source_x END as source,
             CASE  id_x  WHEN '' THEN id_y ELSE id_x END as id 
      FROM df")

 url source id
1   d      d  a
2   d      a  d
3   b      a  d
4   a      d  d
5   b      d  c

where df is :

Row_names id_x source_x url_x id_y source_y url_y
1         1    a        d     d    a        b     a
2         2    d        a     d    b        b      
3         3    d        a     b    b        c     a
4         4    d        d          c        c     a
5         5             d     b    c        c     c

Using a helper function

(1) If we have many of these then we might want to use a helper function which makes use of fn$ from the gsubfn package that implements quasi-perl style string substitution:

xy <- function(s) {
    fn$identity("case $s_x when '' then $s_y else $s_x end as $s")
}

fn$sqldf("select `xy('url')`, `xy('source')`, `xy('id')` from df")

(2) or do it this way -- which stores the SQL statement into s:

s <- fn$identity("select `xy('url')`, `xy('source')`, `xy('id')` from df")
sqldf(s)

More Info

See the sqldf home page and for fn$ see the gsubfn home page.

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