# R colSums By Group

In the following matrix dataset:

``````       1  2   3   4   5
1950   7 20  21  15  61
1951   2 10   6  26  57
1952  12 27  43  37  34
1953  14 16  40  47  94
1954   2 17  62 113 101
1955   3  4  43  99 148
1956   2 47  31  85  79
1957  17  5  38 216 228
1958  11 20  15  76  68
1959  16 20  43  30 226
1960   9 28  28  70 201
1961   1 31 124  74 137
1962  12 25  37  41 200
``````

I have been trying to calculate colSums by decade i.e., find sum the each column from 1950-1959 and then from 1960-69 and so on.

I tried tapply, ddply, etc but couldn't figure out something that would actually work.

-

Try this. First we set up the matrix:

``````Lines <- "1  2   3   4   5
1950   7 20  21  15  61
1951   2 10   6  26  57
1952  12 27  43  37  34
1953  14 16  40  47  94
1954   2 17  62 113 101
1955   3  4  43  99 148
1956   2 47  31  85  79
1957  17  5  38 216 228
1958  11 20  15  76  68
1959  16 20  43  30 226
1960   9 28  28  70 201
1961   1 31 124  74 137
1962  12 25  37  41 200  "
DF <- read.table(text = Lines, check.names = FALSE)
m <- as.matrix(DF)
``````

1) `aggregate`

``````decade <- 10 * as.numeric(rownames(m)) %/% 10
``````

which gives:

``````> m.ag
decade  1   2   3   4    5
1   1950 86 186 342 744 1096
2   1960 22  84 189 185  538
``````

2) `rowsum`

``````rowsum(m, decade)
``````

3) `split/sapply`. Note that this one starts with `DF` rather than `m`. Given `m` we can recover `DF` like this: `DF <- as.data.frame(m)` :

``````t(sapply(split(DF, decade), colSums))
``````

EDIT: added solutions (2) and (3)

-
+1 for `rowsum()`. Thanks for expanding your answer to include those additional options. –  Josh O'Brien Jan 31 '12 at 18:56

`by` is an option:

``````by(x,10*(as.numeric(rownames(x))%/%10),colSums)
INDICES: 1950
1    2    3    4    5
86  186  342  744 1096
------------------------------------------------------------
INDICES: 1960
1   2   3   4   5
22  84 189 185 538
``````
-

There might be a more elegant base R solution, but this works.

``````# Construct a nicely named vector with which to split your data.frame
breaks <- seq(1950, 2000, by=10)
names <- c("50's", "60's", "70's", "80's", "90's")
seq(1950, 2000, by=10), labels=names, right=FALSE)

# by() splits df apart, operating on each of its pieces.
# do.call(rbind, ...) sutures the results back together.
#      X1  X2  X3  X4   X5
# 50's 86 186 342 744 1096
# 60's 22  84 189 185  538
``````
-

You first need to define a grouping variable, then you can use your tool of choice (`aggregate`, `ddply`, whatever).

``````> aggregate(x, by=list(trunc(as.numeric(rownames(x))/10)), sum)
Group.1 X1  X2  X3  X4   X5
1     195 86 186 342 744 1096
2     196 22  84 189 185  538
``````
-
This is just what I meant by "more elegant". Very nice. –  Josh O'Brien Jan 31 '12 at 18:43