# Summary by Row of a Categorical Variable in R

I have the following matrix

``````coin.flip<-expand.grid(c("H","T"),c("H","T"),c("H","T"),c("H","T"))

> coin.flip
Var1 Var2 Var3 Var4
1     H    H    H    H
2     T    H    H    H
3     H    T    H    H
4     T    T    H    H
5     H    H    T    H
6     T    H    T    H
7     H    T    T    H
8     T    T    T    H
9     H    H    H    T
10    T    H    H    T
11    H    T    H    T
12    T    T    H    T
13    H    H    T    T
14    T    H    T    T
15    H    T    T    T
16    T    T    T    T
``````

I would like to get a row by row summary of the counts of H's and T's. I would also like a table of how many row's had 1 T, 2 T's, etc...

Thanks a lot! I've been searching for this answer for a little bit and haven't found anything yet.

-

``````> coin.flip\$total_H <- rowSums(coin.flip=="H")
> coin.flip
Var1 Var2 Var3 Var4 total_H
1     H    H    H    H       4
2     T    H    H    H       3
3     H    T    H    H       3
4     T    T    H    H       2
5     H    H    T    H       3
....snipped
> table(coin.flip\$total_H)

0 1 2 3 4
1 4 6 4 1

Total T's table is just
> table(4- coin.flip\$total_H )

0 1 2 3 4
1 4 6 4 1     # boringly similar to total H table
``````
-
Awesome. Thanks buddy. I just asked a question requiring 'rowSums' too. I am kicking myself for not getting this. –  Michael Jul 13 '11 at 23:06
The "surprise" is in finding that obj=="char" works for data.frames. I knew it would work for a matrix, but discovered on simplification that the same operation preserved structure. –  BondedDust Jul 13 '11 at 23:13

Here's an way using `apply` and then `table`:

``````rs <- t(apply(coin.flip,1,function(x){c(length(which(x=='H')),length(which(x=='T')))}))
table(rs[,2])
``````

I transposed the results from `apply` since that's the way you probably expect them displayed.

-
Hmmm...Looks a rowSums() looks way easier. Thank you for your response though. –  Michael Jul 13 '11 at 23:07

Strictly `coin.flip` is a data.frame not a matrix.

You could use DWin's solution. Another approach is

``````> summary(t(coin.flip))
V1    V2    V3    V4    V5    V6    V7    V8    V9    V10   V11   V12   V13   V14   V15   V16
H:4   H:3   H:3   H:2   H:3   H:2   H:2   H:1   H:3   H:2   H:2   H:1   H:2   H:1   H:1   T:4
T:1   T:1   T:2   T:1   T:2   T:2   T:3   T:1   T:2   T:2   T:3   T:2   T:3   T:3
``````

To get the table quickly, combine the answers from DWin and joran

``````> table(rowSums(coin.flip=="T"))

0 1 2 3 4
1 4 6 4 1
``````
-