# How do I count the number of times where A happened and B happened with R from a table?

Let's say that the data is

``````A B C
0 1 0
1 1 0   <- here A and B is 1
1 0 0
0 1 1
1 1 1   <- here too
1 1 0   <- and here too
``````

I want to count the number of times where both A and B are 1. In this case it is 3. It is very easy with SQL but I have no idea how to do it with R.

-

If `df` is your data.frame with columns, `A,B,C`:

``````sum(df\$A==1 & df\$B==1)
``````
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And if your columns contain only 0 or 1, you can also say `sum(df\$A & df\$B)`, which treats `df\$A` and `df\$B` as boolean vectors ANDed by `&`. – Theodore Lytras May 13 '13 at 18:26

This does the trick, first create some data:

``````df = data.frame(round(matrix(runif(3*10), 10, 3)))
names(df) = c("A","B","C")
``````

and for a solution:

``````sum(rowSums(df[c("A","B")]) == 2)
``````

or:

``````sum(apply(df[c("A","B")] == 1, 1, all))
``````

EDIT (Tyler Rinker):

I was curious about the three approaches considering speed and I figured Pauls first approach would be fastest but was wrong. On a 10,000 row data set using microbenchmark package (500 iterations):

``````## Unit: microseconds
##       expr       min        lq     median        uq         max neval
##  LOGICAL()   386.725   397.455   412.1495   434.308     710.940   500
##    APPLY() 31225.830 39327.696 42790.0280 46586.137 1169824.066   500
##  ROWSUMS()   460.432   489.588   590.5840   621.373    7884.713   500
``````
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feel free to remove my edit but I was curious and thought the info was valuable but didn't have an answer of my own – Tyler Rinker May 13 '13 at 18:55
@TylerRinker thanks for the nice edit! I'm not surprised the `apply` was rather slow as it uses R loops, while `rowSums` uses (probably) C code. – Paul Hiemstra May 13 '13 at 19:14