# collapse rows in dataframe w/NA values

I am trying to collapse rows a, b, and c in a dataframe that looks like this:

>df1 = data.frame(a=c(1,1,0,NA,NA,NA,NA,NA,NA),b=c(NA,NA,NA,0,1,1,NA,NA,NA),c=c(NA,NA,NA,NA,NA,NA,1,0,1))
a  b  c
1  1 NA NA
2  1 NA NA
3  0 NA NA
4 NA  0 NA
5 NA  1 NA
6 NA  1 NA
7 NA NA  1
8 NA NA  0
9 NA NA  1


into row d, creating a dataframe that looks like this:

   a  b  c d
1  1 NA NA 1
2  1 NA NA 1
3  0 NA NA 0
4 NA  0 NA 0
5 NA  1 NA 1
6 NA  1 NA 1
7 NA NA  1 1
8 NA NA  0 0
9 NA NA  1 1


Any and all help would be much appreciated.

-

# using data.frame
df1$d <- apply(df1, 1, sum, na.rm=TRUE) # using data.table DT <- data.table(df1) DT[, d := sum(.SD, na.rm=TRUE), by=1:nrow(DT)]  - I didn't realize by could take rows. Cool stuff! – Frank May 13 '13 at 23:16 How about this... df1$d <- apply( df1 , 1 , max , na.rm=TRUE )
df1$d # [1] 1 1 0 0 1 1 1 0 1  Obviously this assumes that you have either a 1 OR a 0 in each row. If you have both it will always select the 1. This would also work given the data you posted: df1[!is.na(df1)] # [1] 1 1 0 0 1 1 1 0 1  - (+1) for the 2nd answer. That should be the marked answer IMHO. Using apply and rowSums coerces it to a matrix which is not necessary here. – Arun May 13 '13 at 23:17 +1 for the second one!!! I agree with @Arun, this should be the marked one. – Jilber May 13 '13 at 23:40 Thanks both. I guess the usefulness depends on whether the sample data is a true reflection of the full data (i.e. if there is always only 1 value). – Simon O'Hanlon May 13 '13 at 23:45 Another R base solution is using rowSums > transform(df1, d=rowSums(df1, na.rm=TRUE)) a b c d 1 1 NA NA 1 2 1 NA NA 1 3 0 NA NA 0 4 NA 0 NA 0 5 NA 1 NA 1 6 NA 1 NA 1 7 NA NA 1 1 8 NA NA 0 0 9 NA NA 1 1  or directly df1$d <- rowSums(df1, na.rm=TRUE)