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This question already has an answer here:

I would like to add the values of one column grouping them by two columns. I found how to do this on one column, but could not figure out how to do this on two columns. For example if I have the following data frame:

x=c("a","a", "b", "b","c", "c","a","a","b","b","c","c", "a", "a","b","b", "c", "c") 
y=c(1:18) 
q=c("M","M","M", "M","M","M","W","W","W","W","W","W","F","F","F","F","F","F")
df<-data.frame(x,y,q)

I would like to add the values in y column across x and q, so that I have a new data frame like this one

x=c("a","a", "b", "b","c", "c","a","a","b","b","c","c", "a", "a","b","b", "c", "c") 
y=c(3,7,11,15,19,23,27,31,35) 
q=c("M","M","M","W","W","W","F","F","F")
d<-data.frame(x,y,q)

marked as duplicate by David Arenburg r Sep 8 '15 at 16:39

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • aggregate(y~x+q, df, sum) – Jaap Sep 8 '15 at 16:19
  • Or with the dplyr package: df %>% group_by(x,q) %>% summarise(ySum = sum(y)). – eipi10 Sep 8 '15 at 16:20
  • Thanks, both. I tried 'aggregate' and it worked. Will try the second one just for fun. – Vasile Sep 8 '15 at 16:31
4

You have several options:

1: Base R

aggregate(y~x+q, df, sum)

2: data.table

library(data.table)
setDT(df)[, .(sumy=sum(y)), by = .(x,q)]

# when you want to summarise several columns:
setDT(df)[, lapply(.SD, sum), by = .(x,q)]

3: dplyr

library(dplyr)
df %>% group_by(x,q) %>% summarise(sumy = sum(y))

# when you want to summarise several columns:
df %>% group_by(x,q) %>% summarise_each(funs(sum))

All should give you the same result (although not in the same order). For example, the data.table output looks like this:

   x q  y
1: a M  3
2: b M  7
3: c M 11
4: a W 15
5: b W 19
6: c W 23
7: a F 27
8: b F 31
9: c F 35

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