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I am trying to fit two nested models and then test those against each other using anova function. The commands to do that are

probit <- glm(grad ~ afqt1 + fhgc + mhgc + hisp + black + male, data=dt, family=binomial(link = "probit")) nprobit <- update(probit, . ~ . - afqt1) anova(nprobit, probit, test="Rao")

However, the variable afqt1 apparently contains NAs and because the update does not take the same subset of data, anova returns error

Error in anova.glmlist(c(list(object), dotargs), dispersion = dispersion, : models were not all fitted to the same size of dataset

Is there a simple way how to achieve refitting the model on the same dataset as the original model? I could not find any.

share|improve this question
create a subset of your data with all those covariates and use na.omit – rawr Mar 15 '14 at 20:20
That is of course possible if you do "small scale" analysis, but if you want to fit and test multiple specifications and your dataset can contain many covariates, it would be rather tedious, that is why I am asking for "simpler" way. (Something like option in update???) – tomaskrehlik Mar 15 '14 at 20:27
na.action in glm then – rawr Mar 15 '14 at 20:30

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