(This article was first published on

Recently on R-bloggers I found a post from chem-bla-ics blog concerning conversion of factors to integer vectors. At the end it stated a problem of conversion of factor variable to **R snippets**, and kindly contributed to R-bloggers)*class-membership matrix*. In comments several nice solutions were provided. Among them notably function classvec2classmat from kohonen package does the trick and is very fast.

Interestingly this problem can be simply solved using basic rep and matrix functions:

f

**<-**factor**(**sample**(**c**(**"A", "B", "C"**)**, 8, replace**=****TRUE))**matrix

nrow **(**as.integer**(**rep**(**levels**(**f**)**, each**=**length**(**f**))****==**f**)**,**=**length

**(**f

**)**, dimnames

**=**list

**(**f, levels

**(**f

**)))**

In the code we use the fact that R automatically recycles f in comparison. However, classvec2classmat is faster than the solution proposed here. This is easly checked using system.time. On my computer it is roughly two times faster for large number of observations.

Both codes are fast enough for practical applications. However, I wanted to understand the reasons of this speed difference, so I checked out classvec2classmat source:

**function**

**(**yvec

**)**

**{**

yvec

**<-**factor**(**yvec**)** nclasses

**<-**nlevels**(**yvec**)** outmat

**<-**matrix**(**0, length**(**yvec**)**, nclasses**)** dimnames

**(**outmat**)****<-**list**(****NULL**, levels**(**yvec**))****for**

**(**i

**in**1

**:**nclasses

**)**outmat

**[**which

**(**as.integer

**(**yvec

**)**

**==**i

**)**, i

**]**

**<-**1

outmat

**}**

The performance gain is due to two reasons:

- my code compares factors not integers (this could be simply fixed, but does not fully solve the problem);
- classvec2classmat uses assignment operation only for indices that need to be set to 1, whereas my code first creates a vector using rep and then transforms it.

To

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