Dear all,
I am currently using the closed robust design models (full likelihood version) to estimate survival probabilities in a squirrel population.
I have about 700 encounter histories and a sampling design of 32 primary sessions, each consisting of 3 or 5 secondary trapping occasions.
I have convergence issues for the N parameter. In fact, none of my models (from constant model to complex time-dependent models) succeed in estimating this parameter.
I am aware that estimating all the parameters of a fully time-dependent model may be problematic (especially with sparse data set). Nevertheless, knowing that I have relatively high recapture rate (35%), I do not really understand why Mark is not able to estimate the abundance parameters even for my simplest model (without data sparseness).
So my questions :
1) Why the robust design models are not able to estimate abundance parameters ?
2) What are the consequences by using a robust design with non-convergence N estimation for the model selection and others parameters estimates ?
I have tried to use Huggins robust design which calculate the abundance N as a derived parameter. In this this context, the models provide quite good estimations of abundance.
3) As I am more interested in estimating a precise survival than the N parameter, could be this type of robust design models use in my case ? Is there important assumptions to know?
Thank you,
C. Le Coeur