My usual approach to analyses in MARK is to optimize the fit of p (and c in robust models) while constraining all other parameters as a single rate, i.e., (.). Using the model of p with the most support, the other parameters are then optimized one at a time.
Using my approach with the Robust model example RD_Complex.inp in the MARK book, the ‘correct’ p model p=c(good/bad years) received little support relative to ‘wrong’ p models. The 'correct' p model only become apparent after the other parameters were optimized. If this had been a real analysis where the answer was not known, my approach would have led to misleading results, This result suggests that a fishing expedition would be necessary to find the most appropriate parametrization of p, which I'm sure is not the desired approach.
Is my usual approach to model fitting not appropriate for robust models?
Your thoughts are greatly appreciated,
Thanks,
Miguel