I am having an impossible time adapting program MARK for analyzing capture history data collected in robust design format for a population of released animals.
The animals were all marked and released into an enclosed area to estimate survival. Some of the animals perished before making it even to the first capture interval. Thus, I cannot figure out how to incorporate this information into the analysis. Also, I cannot figure out how to condition the analysis on a known starting population without affecting the subsequent capture probabilities and therefore the survival analysis.
I have a detailed explanation of the problem below but that is it in a nutshell.
Thanks,
Brian Todd
Research Design:
30 animals are marked and released into an enclosed pen. They will be recaptured at later dates. The goal is to determine survival between intervals and capture/recapture probabilities. I have reason to believe that survival and capture/recapture probabilities vary over time and wish to do a robust design analysis.
The intervals are as follows:
Start – Initial release of marked population
Week 1 – two consecutive days of censusing
Week 4 – three consecutive days of censusing
Week 8 – two consecutive days of censusing
Graphically:
Initial release –> 1 week later – xx –> 3 weeks later – xxx –> 4 weeks later – xx
Where x equals a recapture day.
The problem:
Starting with a known population of animals makes robust design analysis difficult in Program MARK. 30 animals were released into the study pen and several of them are never recaptured. The question is how to condition the data so that there is a known starting population size at the initial release time. Due to the limits of the robust design, you cannot simply place a ‘1’ at the beginning of each capture history because robust design demands 2 secondary sampling periods within a primary period. It gets interesting here. Because, whether you “condition” the capture history with a ‘11’ or a ‘10’ has serious consequences for all estimates for the rest of the data. With a ‘11’, subsequent survival estimates are underestimated because the program thinks that capture rates should all be very high. With a ‘10’ the estimate may be either too high or too low but it is difficult to know for sure.
The end question is how on earth do you condition capture histories and which options need to be adjusted in Program MARK so as to ensure that the program doesn’t think that the first primary period (actually the release) is indicative of capture rates for the rest of the analysis?