I was wondering about some things in `dummy.coef()`

which converts the estimated parameters (contrasts) in ANOVA models to the original ones. It only works for univariate models, but the changes required to also make it work for multivariate models seem minor. In `dummy.coef.lm()`

:

- line 52
`coef <- object$coefficients`

would have to be`coef <- as.matrix(object$coefficients)`

to accomodate univariate and multivariate models (`coef(object)`

is a vector in the 1st case, and a matrix in the 2nd) - line 60
`ans <- drop(mm[rn == tl[j], keep, drop = FALSE] %*% coef[keep])`

would have to be`ans <- drop(mm[rn == tl[j], keep, drop = FALSE] %*% coef[keep, ])`

to keep all columns in`coef`

- line 61
`names(ans) <- rnn[rn == tl[j]]`

could be`names(ans) <- rep(rnn[rn == tl[j]], ncol(coef))`

to give names to the rows of all columns

The printing method would need some changes, but that seems to be it. **Does anybody know why dummy.coef() was not designed to handle multivariate models?**

Another thing I stumbled upon: Lines 20-22 are

```
for (i in vars) args[[i]] <- if (nxl[[i]] == 1)
rep.int(1, nl)
else factor(rep.int(xl[[i]][1L], nl), levels = xl[[i]])
```

Is that safe? I.e., if the `if()`

clause is `TRUE`

, wouldn't there be an unexpected `else`

? I would have expected something like

```
for (i in vars) args[[i]] <- if (nxl[[i]] == 1) {
rep.int(1, nl)
} else { factor(rep.int(xl[[i]][1L], nl), levels = xl[[i]]) }
```