# How to identify which columns are not “NA” per row in a matrix?

I have a matrix with 12 rows and 77 columns, but to simply lets use:

``````p <- matrix(NA,5,7)
p[1,2]<-0.3
p[1,3]<-0.5
p[2,4]<-0.9
p[2,7]<-0.4
p[4,5]<-0.6
``````

I want to know which columns are not "NA" per row, so what I would like to get would be something like:

``````[1] 2,3
[2] 4
[3] 0
[4] 5
[5] 0
``````

but if I do `> which(p[]!="NA")` I get `[1] 6 11 17 24 32`

I tried using a loop:

``````aux <- matrix(NA,5,7)
for(i in 1:5) {
aux[i,]<-which(p[i,]!="NA")
}
``````

but I just get an error: `number of items to replace is not a multiple of replacement length`

Is there a way of doing this? Thanks in advance

-

Try:

``````which( !is.na(p), arr.ind=TRUE)
``````

Which I think is just as informative and probably more useful than the output you specified, But if you really wanted the list version, then this could be used:

``````> apply(p, 1, function(x) which(!is.na(x)) )
[[1]]
[1] 2 3

[[2]]
[1] 4 7

[[3]]
integer(0)

[[4]]
[1] 5

[[5]]
integer(0)
``````

Or even with smushing together with paste:

``````lapply(apply(p, 1, function(x) which(!is.na(x)) ) , paste, collapse=", ")
``````
-
And finally a check could be added for length() > 0 to return 0 instead of integer(0). –  joran Sep 16 '11 at 18:20
The lapply , collapse output yields empty character elements, `""`, rather than the clunky 'integer(0)'. –  BondedDust Sep 16 '11 at 19:35