Dear all,
I would like some advice on the best way forward when after setting up all your candidate models, the highest ranking model with the lowest AIC has a couple of problem parameters with crazy SE's. Lets consider a situation where your best model is one where survivorship varies over time and you want to report the mean survivoship over a certain period, or indeed the whole time period. If all parameters (except confounded ones) were calculated well, we would easily be able to report a mean value of survivorship with a sensible SE. But, what if a small fraction of these parameters are poorly estimated with SE's in their tens or even hundreds. With these problematic estimations, we would not get a sensible mean survivorship with a sensible SE, for example we would get a phi value of something like 0.79 with an SE of 36.7.
Would it be satisfactory to simply state where problem parameter occur and calculate a mean value over a reduced number of time intervals by omitting these problem parameters?
Obviously, the first things to do would be to look at the m-array to try to understand why these problem parameters occur and if they are fixable, but if nothing is clear in the m-array and the problem is more to do with sparse data in a few places, is the approach above the only option?
Thanks in advance for your thoughts,
Best wishes,
Louise