# How to sum grouped elements of a vector in R

Let's say I have this vector

``````v <- c(1:100)
``````

And I want to get this:

``````b[1] = sum (v[c(1:10)])
b[2] = sum (v[c(11:20)])
...
...
``````

I can do a loop to solve this, but I am pretty sure there is a "R way" that should be something like:

``````b <- groupedSum(v, 10)
``````

where b will be a vector which will have each group of 10 summed What is the R way?

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1) create your grouping variable however is appropriate for your application, 2) use `plyr` or `data.table` or base function `aggregate`. Search the `plyr` tag for several examples that will be relevant. –  Chase Feb 21 '12 at 14:20
Read this: 4dpiecharts.com/2011/12/16/… –  Richie Cotton Feb 21 '12 at 16:34

``````> tapply( v, (seq_along(v)-1) %/% 10, sum)
0   1   2   3   4   5   6   7   8   9
55 155 255 355 455 555 655 755 855 955
``````

If there were NA's in there you might need to add na.rm=TRUE to the argument list after `sum`.

Comments: I think Tyler's approach is more complete because it provided better documentation. It suffers from needing to work around the vagaries of the `cut()` function which I have always felt had the wrong defaults. In order to create a grouping that captures all of 1:100 he needs to use a 101 element vector. But that's not Tyler's fault. Send him any further votes, his answer is better.

If gsk can use by-objects without running into class difficulties, he's a better man than I. The output looks like a list but it's really something different. Using his example:

``````> is.list(by(v,idx,sum))
[1] FALSE
> is.matrix(by(v,idx,sum))
[1] FALSE
> is.vector(by(v,idx,sum))
[1] FALSE
``````

I think by-objects are sort of like named vectors and sort of like matrices but the failure to inherit matrix class has always confused the heck out of me.

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Noted :-). But it turns out that for a single grouping variable it's just a vector: `as.numeric(by(v,idx,sum))` –  Ari B. Friedman Feb 21 '12 at 17:55
I'd do tapply(1:100, rep(1:10, each=10), sum) –  Eduardo Leoni May 26 '12 at 12:11

This solution requires Matrix library.

``````v <- seq(100)# example data
f <- gl(10,10)# generate factor for grouping
v_sums <- as(f,"sparseMatrix") %*% v
``````
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There's already two good methods. I propose the use of cut to give you a range in the output:

``````v <- c(1:100)
dat <- data.frame(v=v, cat = cut(v, seq(0, 100, by=10)))
aggregate(v~cat, data=dat, sum)
``````

Yielding:

``````        cat   v
1    (0,10]  55
2   (10,20] 155
3   (20,30] 255
4   (30,40] 355
5   (40,50] 455
6   (50,60] 555
7   (60,70] 655
8   (70,80] 755
9   (80,90] 855
10 (90,100] 955
``````
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Step 1: Make an index for groups:

``````N <- 50
size <- 10 # Size of a group
v <- seq(N)
idx <- as.factor(rep(seq(N/size),each=size))
``````

Step 2: Use any number of vectorized tools (by, plyr, etc.) to sum over the groups:

``````by(v,idx,sum)
``````

Step 3: Profit

``````idx: 1
[1] 55
---------------------------------------------------------------------------------
idx: 2
[1] 155
---------------------------------------------------------------------------------
idx: 3
[1] 255
---------------------------------------------------------------------------------
idx: 4
[1] 355
---------------------------------------------------------------------------------
idx: 5
[1] 455
``````
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