Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm new to R / having the option to easily re-organize data, and have hunted around for a solution but can't find exactly what I'd like to do. Reshape2's melt/cast doesn't quite seem to work and I haven't mastered plyr well enough to factor it in here.

Basically I have a data.frame with a structure outlined below, with a category column in which each element is a variable-length list of categories (more compact because the # columns is much larger, and I actually have multiple category_lists that I'd like to keep separate):

       ID      category_list    xval    yval
1     ID1   cat1, cat2, cat3   xnum1   ynum1
2     ID2         cat2, cat3   xnum2   ynum2
3     ID3               cat1   xnum3   ynum3

I want to do manipulations with the categories as factors (and the values associated, i.e. columns 3/4), so I think I need something like this in the end, where IDs and x/y/other column values are duplicated according to the length of the category list:

       ID           category    xval    yval
1     ID1               cat1   xnum1   ynum1
2     ID1               cat2   xnum1   ynum1
3     ID1               cat3   xnum1   ynum1
4     ID2               cat2   xnum2   ynum2
5     ID2               cat3   xnum2   ynum2
6     ID3               cat3   xnum2   ynum2

If there's another solution to factor/facet on the category_list, that would be a simpler solution but I haven't come across methods that support this, e.g. the following throws an error

>ggplot(mydf, aes(x=x, y=y)) + geom_point() + facet_grid(~cat_list)

Error in layout_base(data, cols, drop = drop) : At least one layer must contain all variables used for facetting


share|improve this question
Can you post the output of dput(mydf). –  mnel Jan 9 '13 at 0:47

6 Answers 6

up vote 8 down vote accepted

The answer will depend on the format of category_list. If in fact it is a list for each row

Something like

mydf <- data.frame(ID = paste0('ID',1:3), 
 category_list = I(list(c('cat1','cat2','cat3'),  c('cat2','cat3'), c('cat1'))), 
 xval = 1:3, yval = 1:3)


mydf <- as.data.frame(data.table(ID = paste0('ID',1:3), 
 category_list = list(c('cat1','cat2','cat3'),  c('cat2','cat3'), c('cat1')), 
 xval = 1:3, yval = 1:3) )

Then you can use plyr and merge to create your long form data

 newdf <- merge(mydf, ddply(mydf, .(ID), summarize, cat_list = unlist(category_list)), by = 'ID')

   ID    category_list xval yval cat_list
1 ID1 cat1, cat2, cat3    1    1     cat1
2 ID1 cat1, cat2, cat3    1    1     cat2
3 ID1 cat1, cat2, cat3    1    1     cat3
4 ID2       cat2, cat3    2    2     cat2
5 ID2       cat2, cat3    2    2     cat3
6 ID3             cat1    3    3     cat1

or a non-plyr approach that doesn't require merge

 do.call(rbind,lapply(split(mydf, mydf$ID), transform, cat_list = unlist(category_list)))
share|improve this answer
+1 for that nifty use of I()! –  Josh O'Brien Jan 9 '13 at 1:09
Accepted for being most concise. I like the use of I() and did not know about merge(). Thanks! –  williaster Jan 9 '13 at 8:53
Absolutely beautiful! Thank you –  by0 Jan 14 '13 at 20:48

A plodding but seemingly robust solution:

## Some example data
df <- as.data.frame(cbind(ID = paste0("ID", 1:2), 
                          category_list = list(4:1, 2:3), 
                          xvar = 8:9, 
                          yvar = 10:9))

## Calculate number of times each row of df will be repeated 
nn <- sapply(df$category_list, length)  
ii <- rep(seq_along(nn), times=nn)       

## Reshape data.frame
          category = unlist(df$category_list),
          category_list = NULL, 
          row.names = NULL)
#    ID xvar yvar category
# 1 ID1    8   10        4
# 2 ID1    8   10        3
# 3 ID1    8   10        2
# 4 ID1    8   10        1
# 5 ID2    9    9        2
# 6 ID2    9    9        3
share|improve this answer
The use of transform, in particular the df[ii,] trick to expand it, is really nice. Definitely a useful alternative. This helped me understand sapply and seq_along better, too. Thanks. –  williaster Jan 9 '13 at 8:57

A possibility:

x <- read.table(textConnection('
    ID      category_list    xval    yval
     ID1   "cat1, cat2, cat3"   xnum1   ynum1
     ID2         "cat2, cat3"   xnum2   ynum2
     ID3               "cat1"   xnum3   ynum3'),


##    ID    category_list  xval  yval category
## 1 ID1 cat1, cat2, cat3 xnum1 ynum1     cat1
## 2 ID1 cat1, cat2, cat3 xnum1 ynum1     cat2
## 3 ID1 cat1, cat2, cat3 xnum1 ynum1     cat3
## 4 ID2       cat2, cat3 xnum2 ynum2     cat2
## 5 ID2       cat2, cat3 xnum2 ynum2     cat3
share|improve this answer

This will be a non-plyr approach:

cbind( x[ rep(1:nrow(x), 
                            function(xx) sapply( strsplit(xx, ","), length) ) ),
          -2],    # to get rid of the old category column
       new_cats = unlist( strsplit(x$category_list, ",") ) )
 # this used Bolker's example. If these are factor will need to add `as.character`

     ID  xval  yval new_cats
1   ID1 xnum1 ynum1     cat1
1.1 ID1 xnum1 ynum1     cat2
1.2 ID1 xnum1 ynum1     cat3
2   ID2 xnum2 ynum2     cat2
2.1 ID2 xnum2 ynum2     cat3
3   ID3 xnum3 ynum3     cat1
share|improve this answer

Another base R possibility using by:

   function(x) {
                category_list = unlist(strsplit(x$category_list,",")),


       ID category_list  xval  yval
ID1.1 ID1          cat1 xnum1 ynum1
ID1.2 ID1          cat2 xnum1 ynum1
ID1.3 ID1          cat3 xnum1 ynum1
ID2.1 ID2          cat2 xnum2 ynum2
ID2.2 ID2          cat3 xnum2 ynum2
ID3   ID3          cat1 xnum3 ynum3
share|improve this answer

Here's yet another base R approach, combining read.csv() (a trick I learned from @DWin somewhere here on SO) and reshape():

Here's your data:

x <- read.table(textConnection('
        ID       category_list     xval    yval
        ID1  "cat1, cat2, cat3"   xnum1   ynum1
        ID2        "cat2, cat3"   xnum2   ynum2
        ID3              "cat1"   xnum3   ynum3'),
                header = TRUE, stringsAsFactors = FALSE)

Look at what read.csv() can do on a variable with concatenated data. Of course, if the delimiter were something else, you can also use read.table() as a more generic form to specify your delimiters. The basic implementation results in column names in the form of "V1", "V2", and so on.

read.csv(text = x$category_list, fill=TRUE, header = FALSE)
#     V1    V2    V3
# 1 cat1  cat2  cat3
# 2 cat2  cat3      
# 3 cat1            

You can do the following in multiple steps if it clarifies things, but the basic idea is to first cbind your original data.frame (after dropping the concatenated column) with the results of read.csv. Then, use reshape(), setting the relevant variables as ID variables, and a dummy "time" variable.

output <- reshape(cbind(x[-2], 
                        read.csv(text = x$category_list, 
                                 fill=TRUE, header = FALSE)), 
                  direction = "long", 
                  idvar = c("ID", "xval", "yval"), 
                  timevar = "time", 
                  varying = c("V1", "V2", "V3"), 
                  sep = "")
#                    ID  xval  yval time     V
# ID1.xnum1.ynum1.1 ID1 xnum1 ynum1    1  cat1
# ID2.xnum2.ynum2.1 ID2 xnum2 ynum2    1  cat2
# ID3.xnum3.ynum3.1 ID3 xnum3 ynum3    1  cat1
# ID1.xnum1.ynum1.2 ID1 xnum1 ynum1    2  cat2
# ID2.xnum2.ynum2.2 ID2 xnum2 ynum2    2  cat3
# ID3.xnum3.ynum3.2 ID3 xnum3 ynum3    2      
# ID1.xnum1.ynum1.3 ID1 xnum1 ynum1    3  cat3
# ID2.xnum2.ynum2.3 ID2 xnum2 ynum2    3      
# ID3.xnum3.ynum3.3 ID3 xnum3 ynum3    3      

If you need to drop the blank lines, use:

output[output$V != "", ]
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.