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I am new to R. I would like to transform a binary matrix like this:
example:

"   1874 1875 1876 1877 1878 .... 2009  
F     1     0     0     0     0   ...  0
E     1     1     0     0     0   ...  0
D     1     1     0     0     0   ...  0
C     1     1     0     0     0   ...  0
B     1     1     0     0     0   ...  0
A     1     1     0     0     0   ...  0"

Since, columns names are years I would like to aggregate them in decades and obtain something like:

"1840-1849 1850-1859 1860-1869 .... 2000-2009
F     1     0     0     0     0   ...  0
E     1     1     0     0     0   ...  0
D     1     1     0     0     0   ...  0
C     1     1     0     0     0   ...  0
B     1     1     0     0     0   ...  0
A     1     1     0     0     0   ...  0"

I am used to python and do not know how to do this transformation without making loops! Thanks, isabel

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1  
what is the aggregating function? sum? mean? Perhaps make your question reproducible? –  Chase Mar 28 '13 at 14:05
1  
How do you aggreagate the years to one year, e.g. if I have a vector of c(1,1,1,1,1,0,0,0,0,0) for the years 1840 - 1849, what is the resulting number? Minimum, Maximum, Mode, Median? –  Simon O'Hanlon Mar 28 '13 at 14:06
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2 Answers

It is unclear what aggregation you want, but using the following dummy data

set.seed(42)
df <- data.frame(matrix(sample(0:1, 6*25, replace = TRUE), ncol = 25))
names(df) <- 1874 + 0:24

The following counts events in each 10-year period.

Get the years as a numeric variable

years <- as.numeric(names(df))

Next we need an indicator for the start of each decade

ind <- seq(from = signif(years[1], 3), to = signif(tail(years, 1), 3), by = 10)

We then apply over the indices of ind (1:(length(ind)-1)), select columns from df that are the current decade and count the 1s using rowSums.

tmp <- lapply(seq_along(ind[-1]),
              function(i, inds, data) {
                rowSums(data[, names(data) %in% inds[i]:(inds[i+1]-1)])
              }, inds = ind, data = df)

Next we cbind the resulting vectors into a data frame and fix-up the column names:

out <- do.call(cbind.data.frame, tmp)
names(out) <- paste(head(ind, -1), tail(ind, -1) - 1, sep = "-")
out

This gives:

> out
  1870-1879 1880-1889 1890-1899
1         4         5         6
2         4         6         6
3         2         5         5
4         5         5         7
5         3         3         7
6         5         5         4

If you want simply a binary matrix with a 1 indicating at least 1 event happened in that decade, then you can use:

tmp2 <- lapply(seq_along(ind[-1]),
               function(i, inds, data) {
                 as.numeric(rowSums(data[, names(data) %in% inds[i]:(inds[i+1]-1)]) > 0)
               }, inds = ind, data = df)
out2 <- do.call(cbind.data.frame, tmp2)
names(out2) <- paste(head(ind, -1), tail(ind, -1) - 1, sep = "-")
out2

which gives:

> out2
  1870-1879 1880-1889 1890-1899
1         1         1         1
2         1         1         1
3         1         1         1
4         1         1         1
5         1         1         1
6         1         1         1

If you want a different aggregation, then modify the function applied in the lapply call to use something other than rowSums.

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Thanks. I want to have 1 if in resulting vector (ex c(1,1,1,1,1,0,0,0,0,0) there are any 1. Maybe using max(). I will try your suggestion. –  user2219894 Mar 28 '13 at 15:07
    
My second example covers that. as.numeric(rowSums(x) > 0) is essentially what I use there. max only works if you know the data only contains 1s and 0s, though max could be more efficient than the rowSums version, but you would need apply(x, 1, max), i.e. apply max to each row. –  Gavin Simpson Mar 28 '13 at 15:13
    
@GavinSimpson the values in out don't correspond to the sample data you generate. –  Matthew Plourde Mar 28 '13 at 16:28
    
@MatthewPlourde The code I showed gives the correct output but when creating the answer I pasted in code from data generated under a different seed. Thanks again for pointing that out - I've now updated the outputs and out matches your answer for the given input data. –  Gavin Simpson Mar 28 '13 at 16:45
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This is another option, using modular arithmetic to aggregate the columns.

# setup, borrowed from @GavinSimpson
set.seed(42)
df <- data.frame(matrix(sample(0:1, 6*25, replace = TRUE), ncol = 25))
names(df) <- 1874 + 0:24

result <- do.call(cbind, 
    by(t(df), as.numeric(names(df)) %/% 10 * 10, colSums))

# add -xxx9 to column names, for each decade
dimnames(result)[[2]] <- paste(colnames(result), as.numeric(colnames(result)) + 9, sep='-')

#    1870-1879 1880-1889 1890-1899
# V1         4         5         6
# V2         4         6         6
# V3         2         5         5
# V4         5         5         7
# V5         3         3         7
# V6         5         5         4

If you wanted to aggregate with something other than sum, replace the call to colSums with something like function(cols) lapply(cols, f), where f is the aggregating function, e.g., max.

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