# Combining several binary variables

I have 5 variables, `var1`, `var2` etc which are all coded as such:

``````Factor w/ 2 levels "no","yes": 2 1 1 2 1 2 1 1 1 1 ...
``````

I would like to combine them into one. So far I have only used:

``````comb_drug <- with(dt1,interaction(var1, var2, var2, var4, var5))
``````

which gives a variable with 32 levels. I would now like to create a variable with the following 3 levels:

• all 5 are yes
• any 4 are yes
• less than 4 are yes

What is the best way to do this ? Here is some example data:

``````var1 <- as.factor(c(2,2,1,2,2,1,2,1,2,2))
var2 <- as.factor(c(2,1,2,2,2,1,2,2,2,2))
var3 <- as.factor(c(2,2,1,2,2,2,2,2,1,2))
var4 <- as.factor(c(2,2,1,2,2,2,2,2,1,2))
var5 <- as.factor(c(2,2,2,1,2,1,2,1,1,2))

dt <- data.frame(var1,var2,var3,var4,var5)

for ( i in 1:5) {
levels(dt[,i]) <- c("no","yes")
}

var1 var2 var3 var4 var5
1   yes  yes  yes  yes  yes
2   yes   no  yes  yes  yes
3    no  yes   no   no  yes
4   yes  yes  yes  yes   no
5   yes  yes  yes  yes  yes
6    no   no  yes  yes   no
7   yes  yes  yes  yes  yes
8    no   no  yes  yes   no
9   yes  yes   no   no   no
10  yes  yes  yes  yes  yes
``````

``````    newvar
1   allyes
2   4yes
3   lessthan4yes
4   4yes
5   allyes
6   lessthan4yes
7   allyes
8   lessthan4yes
9   lessthan4yes
10  allyes
``````
-

If you subtract `1` from all your data, you'll have zeroes and ones, which is directly interpretable as TRUE/FALSE, which makes software jocks happier :-) . As an added bonus, for some vector of T/F (or 1 and 0), `sum(myvector)` gives you the number of TRUE directly. At that point, you could even have a look-up matrix like

``````sum  label
0    allno
1     one_no
2    lessthan4yes
3    lessthan4yes
4    4yes
5    yes
``````

and do a direct replacement as `newvec <- lutmat[lutmat[,1]==sums,2]` .

-

An alternative that might be slightly faster than `apply(x,1,sum) (`rowSums`)

``````dt\$nYes <- rep(c('<4','4','all'),times = c(3,1,1))[rowSums(dt=='yes')]
``````
-
+1 - thanks - this works nicely... –  Robert Long Apr 24 '13 at 11:37

This should get you on your way... Just add up the number of "yes" values per row:

``````dt\$newvar <- apply(dt, 1, function(x) sum(x == "yes"))
dt\$newvar
#  [1] 5 4 2 4 5 2 5 3 2 5
``````

From there, you can do some clever factoring to get what you need... or this might be good enough for your purposes.

Actually, `rowSums` would be a lot faster probably:

``````dt\$newvar <- rowSums(dt == "yes")
``````
-
+ 1 (your edit!) –  mnel Apr 24 '13 at 11:13