I'm trying to run lm() on only a subset of my data, and running into an issue.

```
dt = data.table(y = rnorm(100), x1 = rnorm(100), x2 = rnorm(100), x3 = as.factor(c(rep('men',50), rep('women',50)))) # sample data
lm( y ~ ., dt) # Use all x: Works
lm( y ~ ., dt[x3 == 'men']) # Use all x, limit to men: doesn't work (as expected)
```

The above doesn't work because the dataset now has only men, and we therefore can't include x3, the gender variable, into the model. BUT...

```
lm( y ~ . -x3, dt[x3 == 'men']) # Exclude x3, limit to men: STILL doesn't work
lm( y ~ x1 + x2, dt[x3 == 'men']) # Exclude x3, with different notation: works great
```

This is an issue with the "minus sign" notation in the formula? Please advice. Note: Of course I can do it a different way; for example, I could exclude the variables prior to putting them into lm(). But I'm teaching a class on this stuff, and I don't want to confuse the students, having already told them they can exclude variable using a minus sign in the formula.

`model.matrix(y ~ . - x3, data = dt[x3 == "men"])`

and`model.matrix(y ~ x1 + x2, data = dt[x3 == "men"])`

work (`lm`

calls`model.matrix`

internally). The only difference between both model matrices is a`"contrasts"`

attribute (which still contains`x3`

) and which gets picked up later on within the`lm`

routine, likely causing the error you're seeing. So my feeling is that the issue has to do with how`model.matrix`

creates and stores the design matrix when removing terms.`.`

to get a simplified formula with`terms(y ~ . -x3, data=dt, simplify=TRUE)`

but oddly it still retains`x3`

in the variables attribute which trips up`lm`

`neg.out=`

option might be related. From the S help files for`terms`

, where`neg.out=`

is implemented:flag controlling the treatment of terms entering with "-" sign. If TRUE, terms will be checked for cancellation and otherwise ignored. If FALSE, negative terms will be retained (with negative order).`lm`

calls`model.matrix`

on a modified version of the data. At the very beginning,`lm`

composes and evaluates the following expression:`mf <- stats::model.frame( y ~ . -x3, dt[x3=="men"], drop.unused.levels=TRUE )`

. This causes`x3`

to become a single-level factor.`model.matrix()`

is then called on`mf`

, not the original data, resulting in the error we're observing.`-x3`

in the formula should exclude`x3`

from the dataframe, so it doesn't matter whether it's single level or not. Why it doesn't exclude it?