I am analyzing a CMR dataset on rabbits in an enclosure (see here for details). Each session a random portion of captured (new and old captures) individuals were blood sampled and their status (disease infected or disease not infected) was assessed.
It is a case of Partial Observation as described in Conn and Cooch 2009. I have applied the classical approach of data censoring and it resulted in a strongly reduced dataset as shown below:
Before data censoring
After data censoring*
*One session is missing because in one session no individuals were blood sampled
After modelling in MARK I get these two as my best models:
whose parameters estimates are shown below:
1st model
2nd model
According to the AIC values and to LRT (Chi-sq=4.027 df=2 p=0.1335) I would say that psi differ among sexes but the estimate of one sex psi seems to be nonsensical (I guess due to data sparseness as, probably for the same reason, there are other estimates that are nonsensical).
I believe that in these cases I should consider that due to lack of data, simply there is no statistical power to detect some effects and the fact you don't find it does not mean necessarily that there is no effect.
Have you any advice or rule of thumb on how to "decide" in cases of data sparseness if an effect is non-detectable or simply does not exist?
Up to now I tend to see to the CI, to the estimates values (meaningless or meaningful) to get an idea but my criterion is perhaps too subjective, I wonder if you have any advice on this.
Simone