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Starting with a data.frame such as:

df = read.table(text = "ref1  code1,code2
           ref2 code3,code4,code5
           ref3 code6", stringsAsFactors=F)
names(df) = c('id', 'codes')
print(df)
    id             codes
1 ref1       code1,code2
2 ref2 code3,code4,code5
3 ref3             code6

wishing for an outcome something like this:

lst = list()
for(i in 1:3) lst[[df[i,1]]] = strsplit(df[i,2], ',')[[1]]
print(lst)
$ref1
[1] "code1" "code2"

$ref2
[1] "code3" "code4" "code5"

$ref3
[1] "code6"

How might it be possible to get to this point without (slow) iteration? as.list(df) only works by column:

$id
[1] "ref1" "ref2" "ref3"

$codes
[1] "code1,code2"       "code3,code4,code5" "code6" 

Thanks in advance.

share|improve this question
up vote 3 down vote accepted

Something like this, perhaps:

lapply(split(df$codes,df$id),function(x) strsplit(x,split = ",")[[1]])
$ref1
[1] "code1" "code2"

$ref2
[1] "code3" "code4" "code5"

$ref3
[1] "code6"

Ananda's solution mentioned below is IMHO far superior:

setNames(strsplit(df$codes, ","), df$id)
share|improve this answer
    
Ah split is what I was after! But I do like your little lapply flourish :) – geotheory Oct 4 '13 at 15:45
1  
I would personally prefer setNames(strsplit(df$codes, ","), df$id), but +1 for the concept in the split step. – A Handcart And Mohair Oct 4 '13 at 16:29
    
@AnandaMahto Yeesh. I think you're being awfully generous with your praise of my unnecessary use of split. – joran Oct 4 '13 at 16:40
    
If you edit your post, I can retract my vote :) – A Handcart And Mohair Oct 4 '13 at 16:43

You may also try this

library(splitstackshape)
ll <- concat.split.list(data = df,
                        split.col = "codes",                
                        drop = TRUE)[[2]]
names(ll) <- df$id
ll

# $ref1
# [1] "code1" "code2"
# 
# $ref2
# [1] "code3" "code4" "code5"
# 
# $ref3
# [1] "code6

Update following @Ananda Mahto's comment. Thanks!

setNames(concat.split.list(df, "codes")[["codes_list"]], df$id)
share|improve this answer
1  
Or: setNames(concat.split.list(df, "codes")[["codes_list"]], df$id) (since we know what the resulting column would be, and for the list approach, sep = "," is the default setting). +1, by the way :) – A Handcart And Mohair Oct 4 '13 at 16:18
    
@AnandaMahto, thanks for your comment and change of split.col. I missed the names part after I had read the data... – Henrik Oct 4 '13 at 16:23

Here's another approach.

> lst <- unlist(apply(df[,2, drop=FALSE], 1, strsplit, ","), recursive=FALSE)
> names(lst) <- df[,1]
$ref1
[1] "code1" "code2"

$ref2
[1] "code3" "code4" "code5"

$ref3
[1] "code6"

Also using setNames for naming the list as in @Henrik's answer

> setNames(unlist(apply(df[,2, drop=FALSE], 1, strsplit, ","), recursive=FALSE), df$id)
share|improve this answer

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