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# Converting R Factors into Binary Matrix Values

I would like to convert my dataframe into a matrix that expands a single factor column into multiple ones and assigns a 1/0 depending on the factor. For example

C1 C2 C3
A  3  5
B  3  4
A  1  1

Should turn into something like

C1_A C1_B C2 C3
1      0  3  5
0      1  3  4
1      0  1  1

How can I do this in R? I tried data.matrix, as.matrix which did not return what I wanted. They assign an "integer" value to a single factor column, there is no expansion.

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## migrated from stats.stackexchange.comDec 16 '12 at 12:10

This question came from our site for people interested in statistics, machine learning, data analysis, data mining, and data visualization.

Assuming dat is your data frame:

cbind(dat, model.matrix( ~ 0 + C1, dat))

C1 C2 C3 C1A C1B
1  A  3  5   1   0
2  B  3  4   0   1
3  A  1  1   1   0

This solution works with any number of factor levels and without manually specifying column names.

If you want to exclude the column C1, you could use this command:

cbind(dat[-1], model.matrix( ~ 0 + C1, dat))
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The OP seems to want model.matrix(~.+0,dat). – Roland Dec 16 '12 at 13:47
@Roland Good idea +1. This would be even easier. – Sven Hohenstein Dec 16 '12 at 13:48
@Sven, this worked, thanks. It still keeps C1 in the result though (in addition to C1_A, C1_B columns), any idea how would I remove the original column? This is a more general question though (maybe), simply an easy R way of saying "give me all columns except that one" would do. – user423805 Dec 16 '12 at 15:33
@user423805 See the update of my answer. Or have a look at Roland's comment. – Sven Hohenstein Dec 16 '12 at 15:42
Ok, I just found this: dat <- dat[, setdiff(names(dat), c("C1")]. After conversion this snippet can be used to remove columns by name. Indexing can get tricky IMHO. – user423805 Dec 16 '12 at 15:45
dat <- read.table(text =' C1 C2 C3
A  3  5
B  3  4

Using transform

transform(dat,C1_A =ifelse(C1=='A',1,0),C1_B =ifelse(C1=='B',1,0))[,-1]
C2 C3 C1_A C1_B
1  3  5    1    0
2  3  4    0    1
3  1  1    1    0

Or to get more flexbility , with within

within(dat,{
C1_A =ifelse(C1=='A',1,0)
C1_B =ifelse(C1=='B',1,0)})

C1 C2 C3  C1_B C1_A
1  A  3  5    0    1
2  B  3  4    1    0
3  A  1  1    0    1
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