# How to make each unique observation a factor w/ a binary response in R?

I have a data set like:

``````id   region
1     2
1     3
2     1
3     4
3     5
``````

I want to create a data set like:

``````id   region1 region2 region3 region4 region5
1     0         1      1       0      0
2     1         0      1       0      0
3     0         0      0       1      1
``````

I have been using a handwritten loop that creates a factor regionN each time, but am hoping there is someway to automate this process.

I have also tried the following which fails.

``````n <- 1
while(n <= nrow(region_list))  {
paste("R",as.character(region_list\$region_id[n])) <- subset(region_list, region_list\$region_id == n)
n <- n + 1
}
``````
-

``````DF <- data.frame(id = c(1,1,2,3,3), region = c(2,3,1,4,5))
DM <- table(DF)
DM
#   region
#id  1 2 3 4 5
#  1 0 1 1 0 0
#  2 1 0 0 0 0
#  3 0 0 0 1 1
is.matrix(DM)
#[1] TRUE

require(reshape)
DF2 <- cast(data.frame(DM),id~region)
names(DF2)[-1] <- paste("region",names(DF2)[-1],sep="")
DF2
#  id region1 region2 region3 region4 region5
#1  1       0       1       1       0       0
#2  2       1       0       0       0       0
#3  3       0       0       0       1       1
``````
-
Thanks @Roland. It looks like I might have needed to do: DF2 <- data.frame(cast(data.frame(DM),id~region)). Does that makes sense? Also, the variable names I was getting were in the format: regionX1. Is there a way to get rid of the X easily? – user1489719 Jul 21 '12 at 19:16
One more question: For a similar table, but for which the id's repeat, what value argument do I use to just put a (1) or a (0) instead of frequency? <Using Freq as value column. Use the value argument to cast to override this choice> – user1489719 Jul 21 '12 at 21:36
No, that does not make sense, since `cast`returns a data.frame. The X are introduced by `data.frame`'s `check.names` function, so you might need to set `check.names = FALSE` in one of your calls to `data.frame`. However, I cannot reproduce without more information. I do not understand your second comment. Maybe you should ask a new question. – Roland Jul 22 '12 at 10:35

This solution uses `ddply` form plyr but any similar split-apply-combine tool will work with the same basic pieces:

``````dat <- read.table(text = "id   region
1     2
1     3
2     1
3     4
3     5",header = TRUE,sep = "",stringsAsFactors = TRUE)

dat\$region <- factor(dat\$region)

foo <- function(x){
res <- as.integer(levels(x\$region) %in% x\$region)
names(res) <- paste0("region",1:5)
res
}

ddply(dat,.(id),.fun = foo)
id region1 region2 region3 region4 region5
1  1       0       1       1       0       0
2  2       1       0       0       0       0
3  3       0       0       0       1       1
``````

You could get around converting `region` to a factor, but then I think you'd have to hard code the possible unique values it could take inside of `foo`.

-
I'm sure this likely works as well, but the first response seemed easier for me to understand and replicate with the number of tables for which I need to perform this function. – user1489719 Jul 21 '12 at 19:17