Have you considered using `caret`

's `dummyVars`

? It works for me and seems reasonably fast.

`?dummyVars`

compares the default behavior of `model.matrix`

and `dummyVars`

, but doesn't say much about it.

For a small performance benchmark on a reproducible example:

```
n = 1e3 # observations
m = 1e2 # variables
some_levels <- sort(c(LETTERS, letters))
library('microbenchmark')
set.seed(1234)
df <- data.frame(
lapply(1:m, function(x){
switch(sample.int(3,1),
# "some continuous, some 0-1"
'1' = rnorm(n), '2' = rbinom(n, 1, 0.5),
# "some factors with many levels"
'3' = factor(sample(some_levels, n, TRUE),
levels=some_levels )
)
})
)
names(df) <- paste0('V',1:m)
#------------- it sounds like you are doing something like this --------------
frm <- as.formula( paste('~', paste(names(df), collapse='+') ) )
library('Matrix')
microbenchmark(
mm <- sparse.model.matrix(frm, df)
) # mean = .133 sec (YMMV)
#---------------- you could try something like this --------------------------
library('caret')
microbenchmark(
mm2 <- dummyVars(frm, df, fullRank=TRUE)
) # mean = .00954 sec (YMMV)
```

Note `fullRank = TRUE`

so that "factors are encoded to be consistent with `model.matrix`

and the resulting there [sic] are no linear dependencies induced between the columns," per `?dummyVars`

. You might want to remove `fullRank = TRUE`

to induce the behavior of `sparse=TRUE`

in `contr.ltrf`

as in `sparse.model.matrix`

. I could not find clear documentation.

`sparse.model.matrix`

to see where the bottlenecks are? – Ben Bolker Oct 4 '15 at 23:20