# How to create contigency tables (crosstabs) in R for a subset of columns with categorical data?

I have a table whose header looks like this (I've simplified it):

``````id, a1, a2, a3, a4, a5, a6, a7, a8, a9, a10
``````

where each row, except for id, is a categorical variable. Let's name the categories A, B, C, D, E.

I would like to create a contingency table for some of the columns, such as below (for brevity, I have not put sample numbers in the cells). Getting the total column/row would be great, but not mandatory, I can calculate it myself later.

``````      a1  a2  a3  a4 Total
----------------------
A|
B|
C|
D|
E|
Total|
``````

Thus, the question is how to create a crosstab based on multiple columns in R? The examples I've seen with table() and xtabs() use a column only. In my case, the columns are adjacent, so one crosstab would summarize columns a1..a4, another a5..a7 and so on. I hope there is an elegant way to do this.

I'm a programmer, but a newbie in R.

-

Your data is poorly formatted for this purpose. Here's one approach to appropriately reshaping the data with the `reshape` package.

``````library(reshape)
data.m <- melt(data, id = "id")
``````

To compute a table for all levels, with margins, you could use

``````cast(data.m, value ~ variable, margins = T)
``````

For a subset, take the relevant subset of `data.m`.

-

Here's how to do it using base R commands. You don't need the `for` loop if every column has the same factor levels, but the loop would be a good fail-safe.

``````> set.seed(21)
> df <- data.frame(
+   id=1:20,
+   a1=sample(letters[1:4],20,TRUE),
+   a2=sample(letters[1:5],20,TRUE),
+   a3=sample(letters[2:5],20,TRUE),
+   a4=sample(letters[1:5],20,TRUE),
+   a5=sample(letters[1:5],20,TRUE),
+   a6=sample(letters[1:5],20,TRUE) )
>
> for(i in 2:NCOL(df)) {
+   levels(df[,i]) <- list(a="a",b="b",c="c",d="d",e="e")
+ }
>