I am estimating the same logistic regression (but with the variables in different order) using the glm package in R. All the variables are binary (one dependent variable, a co-variate, one interaction term). But depending on the order of the variables in the model, I get different results. Specifically, a NA for the standard error for one variable that I use in an interaction term ONLY when I cluster the standard errors. I have no idea why this is happening.

Here's my code:

```
mod1 <- glm(dv ~ cov + var1*var2,family binomial(link = "logit"),data = dat)
mod2 <- glm(dv ~ var1*var2 + cov,family = binomial(link = "logit"),data = dat)
stargazer(mod1,mod2)
```

Produces (output edited so easier to read):

```
cov & 0.300 & 0.300 \\
& (1.128) & (1.128) \\
var1 & $-$0.008 & $-$0.008 \\
& (2,543.188) & (2,543.188) \\
var2 & 19.828 & 19.828 \\
& (1,902.767) & (1,902.767) \\
var1:var2 & $-$0.569 & $-$0.569 \\
& (2,543.188) & (2,543.188) \\
```

The results are the same above but they're different when I cluster the standard errors:

```
stargazer(coeftest(mod1,vcov = cluster.vcov(mod1, dat$groupid)),coeftest(mod2,vcov = cluster.vcov(mod2, dat$groupid)))
```

Produces:

```
cov & 0.300 & 0.300 \\
& (1.073) & (1.073) \\
var1 & $-$0.008 & $-$0.008 \\
& (0.036) & NA \\
var2 & 19.828$^{***}$ & 19.828$^{***}$ \\
& (0.183) & (0.376) \\
var1:var2 & $-$0.569 & $-$0.569 \\
& (0.469) & (0.434) \\
```

Notice that here the standard error for `var1`

is NA. I have no clue what is going on. Any help would be greatly appreciated!