Hi Jim,
Thank you for the explanation! It is great. I have some doubts, though, about when to keep a model as a good model: If I understood correctly, if the warning message is, e.g.:
**** Numerical convergence was not reached.
Parameter estimates converged to approximately 4.52 significant digits.
I should keep the model (the number is > 2).
However, the estimates (betas) are not so good looking (for instance):
estimate std.error
A1

ccupancy psi1 0.671743 (6687834.736011)
A2

ccupancy psi1 0.079996 (10352644.074366)
C1 :local extinction eps1 1.346402 (1.553351)
C2 :local extinction eps2 2.356490 (1.327408)
C3 :local extinction eps3 24.510901 (0.000011)
C8 :local extinction eps8 36.048295 (0.000000)
C14 :local extinction eps14 24.716508 (-1.#IND00)
Should I still keep this model as a correct one? In this case it is not so important because it is far from the best model (>10 AIC units) but I am wondering whether this model (if converged) would be up in the ranking. I have gotten many models with this warning message with significant digits >2, but the errors and estimates are a bit weird.
Shall I then keep trying until I get no warning message at all?
Another thing: You suggested not to use the same variable for psi and extinction. I agree. But the thing is that, in case of voles, I constrain Psi as a function on voles in preceding autumn, that is, PSI in season t is function of vole abundance in t - 1 (the same applies to p). Instead, epsilon is function of the voles in that year (e.g. Epsilon3 which is the probability to get extinct between season 3 to season 4 is function of vole abundance in season 3). Therefore, there are "different" variables. Do you think that I should not have this model: PSI(voles preceding autumn)EPS(voles autumn)? Do you still think that I should have only one of them as a function of voles in the same model?
Thank you,
Diego