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I want to perform some stepwise regression (possibly both forward and backward) in R for a log-linear model obtained using glm(), based on LogLikelihood ratio.

Ideally I am looking for a function similar to step() that doesn't use the AIC but the Loglikelihood ratio.

model<-glm(Frequency~ x+s+d+i, data=table_ll, poisson(link=log))
model_sat<-glm(Frequency~ x*s*d*i, data=table_ll, poisson(link=log))
step(model, scope=list(lower=model, upper=model_sat), direction="forward")

Thanks! c

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Statisticians tell us that stepwise regression is "generally bad". However, if you are set on this path bestglm might be of interest to you. Note that AIC is calculated from loglikelihood. –  Roland Sep 18 '13 at 7:16
    
thanks @Roland! I will look into this. This is a starting point, having a 5-dimension contingency table with a lot of factors. Yup, AIC is based on LL but I wanted a direct comparison between the two LLs.I will def look into other methods as well. cheers!c –  chiara Sep 18 '13 at 14:13

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