@yuchinher wrote:
I am trying to model a three level logistic regression using PROC GLIMMIX. When I first added only my level 3 clustering variable into the model, the estimates and odds ratio I got look fine and reasonable. However, when I added both the level 3 and level 2 clustering variable to the model, the estimates and odds ratio I got became really big that are probably unreal (e.g., odds ratio of 40 to odds ratio of 300).
My first thought is that adding additional class variables into the model causes quasi-complete separation, or maybe even complete separation.
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