# Background: Multi-model inference with *glmulti*

*glmulti* is a R function/package for automated model selection for general linear models that constructs all possible general linear models given a dependent variable and a set of predictors, fits them via the classic *glm* function and allows then for multi-model inference (e.g., using model weights derived from AICc, BIC). *glmulti* works in theory also with any other function that returns coefficients, the log-likelihood of the model and the number of free parameters (and maybe other information?) in the same format that *glm* does.

# My goal: Multi-model inference with robust errors

I would like to use *glmulti* with robust modeling of the errors of a quantitative dependent variable to guard against the effect out outliers.

For example, I could assume that the errors in the linear model are distributed as a t distribution instead of as a normal distribution. With its kurtosis parameter the t distribution can have heavy tails and is thus more robust to outliers (as compared to the normal distribution).

However, I'm not committed to using the t distribution approach. I'm happy with any approach that gives back a log-likelihood and thus works with the multimodel approach in *glmulti*. But that means, that unfortunately I cannot use the well-known robust linear models in R (e.g., *lmRob* from robust or *lmrob* from robustbase) because they do not operate under the log-likelihood framework and thus cannot work with *glmulti*.

# The problem: I can't find a robust regression function that works with *glmulti*

The only robust linear regression function for R I found that operates under the log-likelihood framework is *heavyLm* (from the heavy package); it models the errors with a t distribution. Unfortunately, *heavyLm* does not work with *glmulti* (at least not out of the box) because it has no S3 method for *loglik* (and possibly other things).

To illustrate:

```
library(glmulti)
library(heavy)
```

Using the dataset *stackloss*

```
head(stackloss)
```

Regular Gaussian linear model:

```
summary(glm(stack.loss ~ ., data = stackloss))
```

Multi-model inference with *glmulti* using *glm*'s default Gaussian link function

```
stackloss.glmulti <- glmulti(stack.loss ~ ., data = stackloss, level=1, crit=bic)
print(stackloss.glmulti)
plot(stackloss.glmulti)
```

Linear model with t distributed error (default is df=4)

```
summary(heavyLm(stack.loss ~ ., data = stackloss))
```

Multi-model inference with *glmulti* calling *heavyLm* as the fitting function

```
stackloss.heavyLm.glmulti <- glmulti(stack.loss ~ .,
data = stackloss, level=1, crit=bic, fitfunction=heavyLm)
```

gives the following error:

```
Initialization...
Error in UseMethod("logLik") :
no applicable method for 'logLik' applied to an object of class "heavyLm".
```

If I define the following function,

```
logLik.heavyLm <- function(x){x$logLik}
```

glmulti can get the log-likelihood, but then the next error occurs:

```
Initialization...
Error in .jcall(molly, "V", "supplyErrorDF",
as.integer(attr(logLik(fitfunc(as.formula(paste(y, :
method supplyErrorDF with signature ([I)V not found
```

# The question: Which function/package for robust linear regression works with glmulti (i.e., behaves like glm)?

There is probably a way to define further functions to get *heavyLm* working with *glmulti*, but before embarking on this journey I wanted to ask whether anybody

- knows of a robust linear regression function that (a) operates under the log-likelihood framework and (b) behaves like
*glm*(and will thus work with*glmulti*out-of-the-box). - got
*heavyLm*already working with*glmulti*.

Any help is very much appreciated!