I know this post is similar to an earlier post but I'm not sure the response to that post adequately addressed my particular situation.
I am continuing to analyze a rattlesnake mark-recapture data set with very sparse data. The data was collected over 14 years (32 sampling occasions) and has 32 groups to model the effects of age, den, sex, and season (winter vs. summer). I have no individual covariates. My recapture probability is low (0.05 - 0.20, averaging 0.10). My data are too sparse to fit a model with either an interactive or additive effect of time so my global model includes an age*den*sex*season interactive effect. Using a bootstrap GOF, c-hat is about 1.5, and this is consistent with other similarly structured models. Normally I would be fine using this value of c-hat with QAIC, since I cannot think of any other biological reason for overdispersion and my data will support a more complex model. However, my deviance residual plot is very asymmetrical. The points above the zero line are uniformly distributed but there is a large cluster of points just below the zero line. I checked the residual output and I have a lot of encounter histories with observed values of zero and expected values between zero and one. This appears to simply reflect my low recapture rate as there are many (most) encounter histories that were never observed in most groups. This pattern is consistent with even very simple models (e.g., phi(den)p(den)) or models using only a subset of the total data set.
Would simply proceeding with the analysis using QAIC be acceptable since my "global" model has good fit based on the bootstrap GOF? All of the parameter estimates I have gotten in this analysis are what I would have expected to get and consistent with the literature. I cannot think of ways to further simplify my data since my simple models have this same issue. The data is too sparse to run TSM models for all groups. Do I need to reduce the number of groups in the .inp file? Or is this data too sparse for any CJS analysis?
Thank you very much for your help
Javan