# Sum up rows according to specific values

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

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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)
}
x
}
``````
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
``````
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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).

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