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I'm new to R. Here is my specific question. Let's say I'm working with the following data set called "data" for this example. My headers are state, type, and value.

structure(list(state = structure(c(1L, 1L, 1L, 1L, 2L, 2L), .Label = c("AK", 
"AL"), class = "factor"), type = structure(c(2L, 2L, 1L, 1L, 
2L, 1L), .Label = c(" D", " R"), class = "factor"), value = c(100L, 
200L, 100L, 150L, 100L, 150L)), .Names = c("state", "type", "value"
), class = "data.frame", row.names = c(NA, -6L))



  state type value
1    AK    R   100
2    AK    R   200
3    AK    D   100
4    AK    D   150
5    AL    R   100
6    AL    D   150

I want to write a function that will add up the values for each type and state. For example. For AK type R the output would be 300. For AK type D the output would be 250. For AL type R the output would be 100, and for AL type D the output would be 150.

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1  
Quick tip for you grasshopper: square brackets around R in the search box returns you all questions in the R tag i.e. search for "[R]". Then click the "voted" tab and scroll through the top questions. Also, over 600 questions contain the word "aggregate" i.e. "[R] aggregate". –  Matt Dowle Dec 30 '12 at 15:28

5 Answers 5

Not plyr, but just aggregate

> aggregate(value~state+type, data=data,FUN=sum)
  state type value
1    AK    D   250
2    AL    D   150
3    AK    R   300
4    AL    R   100
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Thanks for the help! Saved me loads of time. –  Young Grasshopper Dec 30 '12 at 0:34

Although @Matthew Lundberg's answer is the best one here's some alternatives.

If you really want to use plyr you could do:

ddply(DF, .(state, type), numcolwise(sum))
  state type value
1    AK    D   250
2    AK    R   300
3    AL    D   150
4    AL    R   100

Here's another solution using reshape2 package

library(reshape2)
dcast( melt(DF), state + type ~ variable, sum)
Using state, type as id variables
  state type value
1    AK    D   250
2    AK    R   300
3    AL    D   150
4    AL    R   100

If you want just a vector then this could be useful:

sapply(with(DF, split(value, list(state, type))), sum)
AK.D  AL.D  AK.R  AL.R 
250   150   300   100 
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You can just use tapply

data <- read.csv(header=TRUE,text="state, type, value
AK, R, 100
AK, R, 200
AK, D, 100
AK, D, 150
AL, R, 100
AL, D, 150")

tapply(data$value, list(data$state,data$type), sum)
#     D   R
# AK  250 300
# AL  150 100
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Thanks for the feedback. I really appreciate it! –  Young Grasshopper Dec 30 '12 at 0:38

A plyr solution would be:

ddply(data, .(state,type),summarise, total=sum(value, na.rm = TRUE))
#   state type total
# 1    AK    D   250
# 2    AK    R   300
# 3    AL    D   150
# 4    AL    R   100
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For the sake of completeness, there's also the "data.table" package, and by in base R. Assuming your dataset is called "myd":

by(myd$value, list(myd$state, myd$type), FUN=sum)
# : AK
# :  D
# [1] 250
# ------------------------------------------------------------------------------ 
# : AL
# :  D
# [1] 150
# ------------------------------------------------------------------------------ 
# : AK
# :  R
# [1] 300
# ------------------------------------------------------------------------------ 
# : AL
# :  R
# [1] 100

library(data.table)
DT <- data.table(myd)
DT[, sum(value), by = "state,type"]
#    state type  V1
# 1:    AK    R 300
# 2:    AK    D 250
# 3:    AL    R 100
# 4:    AL    D 150
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