I have a data frame with votes and party labels arranged thus

```
dat <- data.frame( v1=c(25, 0, 70),
v2=c(75, 100, 20),
v3=c(0, 0, 10),
l1=c("pA", ".", "pB"),
l2=c("pB", "pC", "pC"),
l3=c(".", ".", "pD") )
```

so that each row is a unit of analysis. Only vote-getting parties need consideration and this function extracts positive votes or the corresponding labels

```
getpos <- function(vector, vorl="v"){ # change to "l" to report labels
vot <- vector[grep( "v", colnames(vector) )];
lab <- vector[grep( "l", colnames(vector) )];
if (vorl=="v") {vot[vot>0]} else {lab[vot>0]};
}
getpos(dat[1,]) # votes for obs 1
getpos(dat[1,], vorl="l") # labels for obs 1
```

I wish to run function getpos in every row of data frame dat in order to produce lists with vote/label vectors of different length. Applying the function does not return what I expect:

```
apply(X=dat, MARGIN=1, FUN=getpos, vorl="l")
```

Can anyone spot the problem? And related, can this be achieved more efficiently?

`apply`

does is convert`dat`

to a matrix, which will result in all your numbers being converted to characters. You need to fundamentally rethink how you organize this data. Probably in a long rather than wide format.`data.frame(number=c(1,1,2,3,3,3), party=c("pA","pB","pC","pB","pC","pD"), votes=c(25,75,100,70,20,10))`

you will be better placed to use`aggregate`

functions and the like.