# How to combine 2 variables and ignore NAs

I have some data like these

``````var1   var2
10     NA
101    NA
NA     86
11     NA
NA     11
NA     61
``````

If one variable is NA then the other one is not, and vice-versa.

How can I combine them into a single variable:

``````var3
10
101
86
11
11
61
``````

I can do it easily with a loop, but it is quite slow, so I would like to find an easier way. I thought about assigning 0 to the values that are NA and then just adding the variables together...is there a better way ?

-

Various methods exist. Here's one way:

``````var3 <- ifelse(!is.na(var1),var1,var2)
``````

Here it is working on your example:

``````  var1 <- c(10,101,NA,11,NA,NA)
var2 <- c(NA,NA,86,NA,11,61)

var3 <- ifelse(!is.na(var1),var1,var2)

> var3
[1]  10 101  86  11  11  61
``````

This method is relatively general - it works with non-numeric data for example:

``````  var1 <- c("AB","WZ",NA,"MN",NA,NA)
var2 <- c(NA,NA,"QT",NA,"MN","RS")

var3 <- ifelse(!is.na(var1),var1,var2)

> var3
[1] "AB" "WZ" "QT" "MN" "MN" "RS"
``````

The suggestion of replacing `NA` with `0` and adding wouldn't work in that case.

-
woops, my mistake. I missed OP's statement that only one will be NA at a time. –  Ricardo Saporta Nov 27 '12 at 23:13

`rowSums` with `na.rm = TRUE` will do this. (This is your suggested solution really...)

Assuming your data are in a `data.frame` `DF` and your comment

If one variable is NA then the other one is not, and vice-versa.

is true.

`````` DF\$var3 <- rowSums(DF[, c('var1','var2')], na.rm = TRUE)
``````
-
I think this is one of the best of the offered solutions. However, you'll have to watch for rows where both `x` and `y` contain data! –  Justin Nov 27 '12 at 23:09
True, although the question did state that this wasn't possible. –  mnel Nov 27 '12 at 23:14
yup! but in my experience hard and fast rules like that seem to be only made to be broken! –  Justin Nov 27 '12 at 23:16
if (!all(is.na(rowSums(x)))) stop("More than one value is present") –  Matthew Lundberg Nov 28 '12 at 3:29