I am using removal models to estimate abundance and capture probabilities of squirrels. I have used the MARK book, electrofishing literature and threads on this forum but still can’t resolve two key questions:
1) Can you allow time varying p in removal models?
White (1982) says there is no way to deal with time varying p (in CAPTURE), and that removal models are based on the premise that capture probability is constant over time, disregarding effect of individual heterogeneity. I haven’t found any papers using removal models where p varies with time. However threads on this forum, and the section in the MARK book on removals suggest p can be varied with time. I have found that p(time) models return estimates of N equal to the number of squirrels in my capture histories, even if I constrain the final p to equal the penultimate p. This also happens if I fit a trend in p. So although it is easy in MARK to allow p to vary with time, does this mean that this is actually a valid thing to do? Similarly I have seen suggestions to constrain p to effort, although in theory removal models assume constant effort.
2) Is there a way to assess closure in removal models?
I know ‘close test’ exists for closed captures models but haven’t found examples of it being used with removals: obviously as it is designed to look for permanent and temporary emigration as well as immigration I would expect it to always fail for removal models as a removal is permanent! But would the test statistics related to immigration still be valid? Otherwise the only option seems to be to compare estimates of p or N from different parts of the capture history e.g. days 1-5 vs days 1-10 to see whether estimates change with time, and how these compare to the total number caught over the full trapping session (up to 15 days). Alternatively, using model Mbh, p(time) or p(Time) in MARK, I have seen some evidence for increasing capture probability – animals becoming used to traps, or evidence of non-closure?
Thanks, Amelia.