I searched the forum and did not find this topic covered. We are running relatively simple encounter history data with only 4 entries per animal. We have broken down the input files to only include the encounter history and group ID column, like this:
1011 1;
We have run 4 models on every parameter:
1) p(t)c(t) not equal
2) p ( c ) not equal
3) p.c. equal
4) p.c(t) not equal
Most often MARK likes #1 the least, but this may be due to the run generating incorrect CIs for that model, although the estimates themselves seem reasonable. Occasionally some of the other models have incorrect CIs too; they might be very large, negative values, or do not bracket the population estimate at all. Any thoughts on changes in input, or others experience with these models and crazy output?