This is a complex question, so I will try to make this as concise as possible.
Here's the scenario:
-Full Closed Capt w/ Het data type w/ 2 groups (M&F)
-10 capture occasions resulting in full DM of 80 rows
-12 candidate models
-some w/ 2 mixtures, some w/o and properly constrained
-some 2-mixture models w/ group specific mixtures (additive)
-data set supports mixtures w/ high probability of coming from mixture w/ low p
-I want to report model-averaged estimates of p for each group and measure of heterogeneity
Problem:
-sometimes, for individual mixture models w/ similar structure, MARK outputs pi's representing different mixtures with corresponding reversals in p's outputed (as does RMark)
-Example: for 2 models with same mixture structure; model 1 outputs pi=.75, pA=.1, pB=.4 and model 2 outputs pi=.25, pA=.4 and pB=.1.
My concern is that MARK model averages corrresponding rows from each model according to the full DM. In the above example, this would result in model weights being applied to parameter estimates that essentially represent different mixtures.
I planned on using the formulas from Carothers (1973, Biometrics 29) that Boulanger et al. (2006, Ursus 17) used to calculate mean capture probabilities based on 2 mixture distributions and CV's as indices of heterogeneity. I just need clarification on how to ensure that the model-averaged estimates I use are right.
Thanks
Jared