# Creating data frame without duplicates in one column but could have duplicates in others

I have a problem creating a matrix when my data frame contains duplicates on both columns Example

``````n = c('A', 'B', 'C', 'A', 'B', 'B')
s = c("aa", "bb", "cc","dd","aa","cc")
df = data.frame(n, s)
``````

But using df I need to create something like this: new data frame (NDF)

``````A  "aa" "dd"
B  "bb" "aa" "cc"
C  "cc"
``````

As you can see, I used only unique values from column n on my data frame df and the rows are filled with values from df\$s, the latest value in this example could be zero or na (right now is empty).

``````F<-matrix(nrow=length(unique(df\$n)),ncol=length(unique(df\$s)))
``````

But when I tried to make a loop here (For (i)...For.(j)...) I could not figure it out how to do it./ Any help is more than welcome Thanks in advance

-
Please clarify your question! – agstudy Aug 6 '13 at 15:09

## 2 Answers

Not clear what you want since a `data.frame` has to be rectangular.

Maybe you want this:

``````tapply(s, n, list)
#\$A
#[1] "aa" "dd"
#
#\$B
#[1] "bb" "aa" "cc"
#
#\$C
#[1] "cc"
``````
-

You could use `dcast` function from `plyr` package to get the following data.frame:

``````dcast(data=df, n ~ s)
n   aa   bb   cc   dd
1 A   aa <NA> <NA>   dd
2 B   aa   bb   cc <NA>
3 C <NA> <NA>   cc <NA>
``````

If you want to have all non-NA values "in front" you need to do more. I've come to the following solution, which isn't pretty at all but works.

``````x <- dcast(data=df, n ~ s)
t(apply(x ,1 ,function(x){
tmp <- sum(is.na(x))
c(x[complete.cases(x)], rep(NA,tmp))
}))
[,1] [,2] [,3] [,4] [,5]
[1,] "A"  "aa" "dd" NA   NA
[2,] "B"  "aa" "bb" "cc" NA
[3,] "C"  "cc" NA   NA   NA
``````
-