2

I have a table like:

ppp<-data.frame(client=c(1,1,1,3,3), 
                calldate=c('2014-08-07', '2014-08-09','2014-08-06','2014-08-07', '2014-08-08'),
                cant=c(1,2,3,2,1))

I need to calculate the cumulative sum of cant over days by each client. In this case I need to get the following table:

client    calldate   cant   cum cant
     1  06/08/2014      3          3
     1  07/08/2014      1          4
     1  09/08/2014      2          6
     2  07/08/2014      2          2
     2  08/08/2014      1          3

I tried this and I got the rigth solution:

ppp <- ppp[order(ppp$client,ppp$calldate),]
ppp$cumsum<-unlist(tapply(ppp$cant,ppp$client,FUN=cumsum))

But this is the best way to do it? creating a list for each client and then unlisting the list? Also, because I'm not specifying the date field, I only order the data instead.

2
  • @RichardScriven, the order of dates in ppp above need to be reordered chronologically, hence the different answer. – sebpardo Oct 23 '14 at 18:40
  • You could also use ave instead of unlist(tapply( – user20650 Oct 23 '14 at 22:48
5

Or a data.table option

library(data.table) # 1.9.4+
setorder(setDT(ppp), client, calldate)[, cum_cant := cumsum(cant), by = client]
ppp
#    client   calldate cant cum_cant
# 1:      1 2014-08-06    3        3
# 2:      1 2014-08-07    1        4
# 3:      1 2014-08-09    2        6
# 4:      3 2014-08-07    2        2
# 5:      3 2014-08-08    1        3

Edit: For older data.table versions (< 1.9.4) use setkey instead of setorder

setkey(setDT(ppp), client, calldate)[, cum_cant := cumsum(cant), by = client]

Edit #2 (per OPs comment):

setkey(setDT(ppp), client, calldate)[, `:=`(cum_cant = cumsum(cant),
                                            cummin_cant = cummin(cant)), by = client]
3
  • @DavidArenburg, thanks. I get an error: library(data.table) # 1.9.4+ > setorder(setDT(ppp), client, calldate)[, cum_cant := cumsum(cant), by = client] Error: could not find function "setorder". I have the library installed as you can see when I opened it. – GabyLP Oct 23 '14 at 20:34
  • @GabyP, see my edit. It's would be better though if you''ll update your data.table package to the newest version – David Arenburg Oct 23 '14 at 20:34
  • @DavidArenburg, that's great, can I also add another cumfun, for example cummin in the same step??? – GabyLP Oct 23 '14 at 20:40
5

The package dplyr will do this for you very easily:

library(dplyr) 

ppp %>% group_by(client) %>% arrange(calldate) %>% mutate(cumcant=cumsum(cant))

#client   calldate cant cumcant
#1      1 2014-08-06    3            3
#2      1 2014-08-07    1            4
#3      1 2014-08-09    2            6
#4      3 2014-08-07    2            2
#5      3 2014-08-08    1            3
1
  • might be better to name the result as you go (e.g. mutate(cumsum_cant=cumsum(cant))) so you don't end up with a non-standard column name – Ben Bolker Oct 24 '14 at 1:47
3

Here's another base R possibility using ave

ppp$cumcant <- with(ppp, {
    ave(cant[order(client, calldate)], client, FUN = "cumsum")
})
ppp
#   client   calldate cant cumcant
# 3      1 2014-08-06    3       3
# 1      1 2014-08-07    1       4
# 2      1 2014-08-09    2       6
# 4      3 2014-08-07    2       2
# 5      3 2014-08-08    1       3
1
  • You must have done an order on ppp before this, otherwise you get results that don't match. Also ave is essentially already split + lapply - this reinvents the wheel a bit. – thelatemail Oct 24 '14 at 0:32

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