I am attempting to use the R package *glmulti* to assess the importance of 21 variables in predicting my binary response. This package efficiently "builds all possible unique models involving these variables". However, several of my predictor variables are highly correlated and so they should not be included together in the same models. I am aware that traditionally one of these correlated variables is simply dropped from the models, but I am curious if there is a way to include them both as predictors, but specify that models containing both should not ultimately be considered.

*glmulti* will accept a custom list of fitted model objects, but given that I have 21 variables I am not thrilled at the idea of generating a list of all possible combinations and then filtering out the ones with correlated variables; this semi-defeats the purpose of running *glmulti*.

There is also code available on the *glmulti* help page that demonstrates how to include some variables in all the models, but I am unsure if this could be modified for my purpose.

This question was asked before in 2015 (glmulti: excluding combinations of correlated predictor variables from candidate sets of glm models using glmulti), but no answers were ever given. Any help or suggestions would be very much appreciated!

Below is the formula I would use for a standard *glmulti* call:

```
test <- glmulti(response, predictors, data = data, family = binomial, method = "h", intercept = TRUE, plotty = FALSE, crit = "aicc", level = 1)
```

This is the example on the R help page that shows how to include some variables in all candidate models:

```
# B. This shows how to include some terms in ALL the models
# As above, we just prepare a wrapper of the fitting function
glm.redefined = function(formula, data, always="", ...) {
glm(as.formula(paste(deparse(formula), always)), data=data, ...)
}
# we then use this fitting function in glmulti
glmulti(vy2~va,level=1,fitfunc=glm.redefined,always="+vb")-> bab
# va will be shuffled but vb is always included in the models
```