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keeping both numerically and factor coded factors

Thank you,

Robert Long, I think we are claiming the same idea: the maximal model is too complex (overparameterized and with a degenerate/singular solution) and I want to reduce the random structure, following the steps suggested by Bates et al.. Am I correct?
However one of these steps it's indeed "forcing to zero the correlation parameters" and check the good fit of the consequent model. Therefore my question on how to arrange my D factor in the random structure.

I still don't know how to handle CS model suggested by Bolker ((1|g/f)) and how to integrate more factors in that structure ((f1*f2|g/f3)?) ... any suggestions would be much appreciated!

Elisa Monaco  


-----Message d'origine-----
De?: R-sig-mixed-models <r-sig-mixed-models-bounces at r-project.org> De la part de Robert Long
Envoy??: mercredi, 24 juillet 2019 10:33
??: R-mixed models mailing list <r-sig-mixed-models at r-project.org>
Objet?: Re: [R-sig-ME] keeping both numerically and factor coded factors

It is quite possible that such a complex random structure will not be supported by the data.

In your initial email you mentioned correlations between random effects.
However, since the model did not converge, there is no point in intetpreting them. Moreover, to force them to be uncorrelated is possibly making unrealistic constraints on the model.

Why do seek such a complex random structure ? If you are following the advice by Barr et al (2013) to "keep it maximal", this is often very poor advice, as noted by Bates et al (2015), Bates being the primary author of the lme4 package:

https://arxiv.org/pdf/1506.04967
On Wed, 24 Jul 2019, 09:01 MONACO Elisa, <elisa.monaco at unifr.ch> wrote:

            
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