# Aggregate data in R

I'm looking for a dead simple example on how to use aggregate and calculate means in R.

Say, I have the following data frame:

A      B
100    85
200    95
300    110
400    105

And I want to calculate the mean values for some ranges with the following result:

RANGE         MEAN
100-200       90
300-400       107.5

How would I go about doing this, cast() or aggregate()?

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Your question is unclear. What variable do you want to aggregate on (What do you mean by "some ranges")? –  danas.zuokas Jun 29 '12 at 12:02
Oh, forgot to change the heading for the second table - fixed now. –  Johnny Jun 29 '12 at 12:06

Assuming your data frame is named "x":

aggregate(x\$B, list(cut(x\$A, breaks=c(0, 200, 400))), mean)
#     Group.1     x
# 1   (0,200]  90.0
# 2 (200,400] 107.5

With "data.table", you can do the following:

library(data.table)
as.data.table(x)[, .(RANGE = mean(B)), by = .(MEAN = cut(A, c(0, 200, 400)))]
#         MEAN RANGE
# 1:   (0,200]  90.0
# 2: (200,400] 107.5
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Thanks very much! –  Johnny Jun 29 '12 at 22:13
For nicer looking output: aggregate(list(mean = df\$B), list(range = cut(df\$A, breaks=c(0, 200, 400))), mean) –  Ananda Mahto Jul 24 '12 at 16:32

Here is a basic example of aggregate usage.

> foo = data.frame(A=c(100,200,300,400),B=c(85,95,110,105))
> aggregate(foo\$B,by=list(foo\$A<250),FUN=mean)
Group.1     B
1   FALSE 107.5
2    TRUE  90.0
>
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Or the same with cut and tapply

foo <- data.frame(A=c(100,200,300,400),B=c(85,95,110,105))
tapply(foo\$B, cut(foo\$A, breaks=seq(0, 400, 200)), mean)
(0,200] (200,400]
90.0     107.5
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