# calculate cumulative sum of one column based on another column's rank

i have a dataset that looks like this:

amount    rank    category
4000      1       A
200       3       A
1000      2       A
10        4       A
500       1       B
...


I want to calculate the cumulative sum of amount based on ordering of rank, i.e. return:

cum      rank    category
4000     1       A
5000     2       A
5200     3       A
5210     4       A
...


any help would be nice! :)

• – dave
Apr 2, 2014 at 22:56
• doesn't really look related? Apr 2, 2014 at 23:03
• What you are asking for is a group by using two different columns. You are trying to sum, grouping by category and then rank. That question gives good answers on how to do it.
– dave
Apr 2, 2014 at 23:09
• @dave, I agree that it's indeed possible to get to the answer from the link, but similar answers aren't considered duplicates (to my knowledge). That being said, there may very well be exact duplicates of this question, as it is indeed a trivial one.
– Arun
Apr 2, 2014 at 23:37
• @daikonradish, by trivial, what I mean is that these sort of questions are so common on SO that searching would land up on quite a few exact, if not related hits. It just takes a bit of effort on your part.
– Arun
Apr 2, 2014 at 23:49

A data.table solution:

require(data.table) ## version >= 1.9.0
setDT(dat)          ## converts data.frame to data.table by reference

setkey(dat, category, rank) ## sort first by category, then by rank
dat[, csum := cumsum(amount), by=category]

#    amount rank category csum
# 1:   4000    1        A 4000
# 2:   1000    2        A 5000
# 3:    200    3        A 5200
# 4:     10    4        A 5210
# 5:    500    1        B  500


A dplyr solution:

library(dplyr)

data = data.frame(amount = c(4000, 200, 1000, 10, 500),
rank = c(1, 3, 2, 4, 1),
category = c("A", "A", "A", "A","B"))

data %>% arrange(category, rank) %>%
group_by(category) %>% mutate(csum = cumsum(amount))