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.

That's my data frame

Colour = c("red",   "blue", "red",  "blue", "yellow",   "green",    "red",  "blue", "green",    "red",  "yellow",   "blue")
Volume  = c(46,46,57,57,57,57,99,99,99,111,111,122)
Cases   = c(7,2,4,2,3,5,1,2,3,2,4,1)
df = data.frame(Colour, Volume, Cases)

I want to sum up Cases if Colour is "red" OR "blue" but if Volume is identical. Those colours which are not specified should be kept. If red and blue can't be summed up because they differ in Volume then they should also be kept

The reult should look like that:

Colour = c("red_or_blue","red_or_blue","yellow","green","red_or_blue","green","red","yellow","blue")
Volume  = c(46,57,57,57,99,99,111,111,122)
Cases   = c(9,6,3,5,3,3,2,4,1)
df_agg = data.frame(Colour, Volume, Cases)

I've figured out a way where I create a further column which assigns an "red_or_blue" to the row with red or blue and an x for the remaining rows. I then used aggregate:

df$test = ifelse(df$Colour %in% c("red", "blue"),"red_or_blue","x")
df_agg = aggregate(df$Cases, list(df$Volume, df$test), sum)

It works but i found this a bit cumbersome. Is there a more handy way that would skip creating an extra column? In future I need to sum up cases for red/blue AND for Volume 57/99. Having the extra column appears to make it a bit more tricky.

Also, I didn't manage to get the original colour being taken over if it's not red nor blue. I tried it this way but it woudln't work:

df$test = ifelse(df$Colour %in% c("red", "blue"),"red_or_blue",df$Colour)

Cheers, Paul

share|improve this question

2 Answers 2

Here's a way sticking in base R (but probably not the most efficient way....)

  1. Split your data into groups by Volume

    temp = split(df, df$Volume)
  2. Create a quick function to change the values for "red" and "blue" only in groups where there is a "red" AND a "blue" present.

    red.and.blue = function(x) {
      if (sum(c("red", "blue") %in% x$Colour) > 1) {
        x$Colour = gsub("red|blue", "red-and-blue", x$Colour)
      } else {
        x$Colour = as.character(x$Colour)
  3. Use that function on your temp object that you created in Step 1:

    temp = lapply(temp, red.and.blue)
  4. Use aggregate() to perform the aggregation you need to do. Specify the names in the aggregate() arguments so that you maintain your original column names.

    temp = lapply(temp, function(x) aggregate(list(Cases = x$Cases), 
                                              list(Colour = x$Colour, 
                                                   Volume = x$Volume), sum))
  5. Put it back all into a data.frame(). Don't forget to assign a name if you want to store it as is.

    do.call(rbind, temp)
    #             Colour Volume Cases
    # 46    red-and-blue     46     9
    # 57.1         green     57     5
    # 57.2  red-and-blue     57     6
    # 57.3        yellow     57     3
    # 99.1         green     99     3
    # 99.2  red-and-blue     99     3
    # 111.1          red    111     2
    # 111.2       yellow    111     4
    # 122           blue    122     1
share|improve this answer
Of course, edit appropriately for "red-or-blue" instead of "red-and-blue" as I've done here. –  Ananda Mahto Aug 17 '12 at 8:50
Thanks mrdwab. It works well and its more elegant than my way. Doing it your way how can I also aggregate for volume at the same time, i.e aggregate if colour = red or blue and aggregate if volume = 46 or 57. Doing it my way i simply add a new column. using your way I first create a new formula for volume 46 or 57 but then I need to integrate it in steps 3ff. –  paulburg Aug 22 '12 at 10:58

I think if you follow @mrdwab's approach, you can use sapply on each "split volume" to do

df$Cases <- sum(df[(df$Colour =='blue' | df$Colour == 'red'),][,3])

to get the number of cases, and

df$Colour[(df$Colour =='blue' | df$Colour == 'red')] <- 'readandblue'

to change the colornames. I'm also willing to bet there's a 2-line solution using ddply but I'm not an expert w/ that tool (yet).

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.