# Convert a factor column to multiple boolean columns

Given data that looks like:

``````library(data.table)
DT <- data.table(x=rep(1:5, 2))
``````

I would like to split this data into 5 boolean columns that indicate the presence of each number.

I can do this like this:

``````new.names <- sort(unique(DT\$x))

DT[, paste0('col', new.names) := lapply(new.names, function(i) DT\$x==i), with=FALSE]
``````

But this uses a pesky `lapply` which is probably slower than the data.table alternative and this solutions strikes me as not very "data.table-ish".

Is there a better and/or faster way to create these new columns?

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Would something like `model.matrix` be helpful? `model.matrix(~cols-1)` – BenBarnes Jul 5 '12 at 18:51

How about `model.matrix`?

``````model.matrix(~factor(x)-1,data=DT)

factor(x)1 factor(x)2 factor(x)3 factor(x)4 factor(x)5
1           1          0          0          0          0
2           0          1          0          0          0
3           0          0          1          0          0
4           0          0          0          1          0
5           0          0          0          0          1
6           1          0          0          0          0
7           0          1          0          0          0
8           0          0          1          0          0
9           0          0          0          1          0
10          0          0          0          0          1
attr(,"assign")
[1] 1 1 1 1 1
attr(,"contrasts")
attr(,"contrasts")\$`factor(x)`
[1] "contr.treatment"
``````

Apparently, you can put `model.matrix` into `[.data.table` to give the same results. Not sure if it would be faster:

``````DT[,model.matrix(~factor(x)-1)]
``````
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Of course there is an answer from base R... Thanks! – Justin Jul 5 '12 at 18:55

There is also `nnet::class.ind`

``````library(nnet)

cbind(DT, setnames(as.data.table(DT[, class.ind(x)]),paste0('col', unique(DT\$x))))
``````
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