Hello all,
I'm attempting to examine trends in lemur density, both how they are influenced by habitat degradation, and what their trend is over time. For the habitat degradation, I am stratifying by discrete classes (A = intact, B = intermediate, C = degraded), and for the annual trends, I have one site that has 4 years' worth of data, and another site with 3 years' worth of data.
My problem is that it always seems to be the last stratum that has an issue with precision. For example, for the habitat degradation analysis, the degraded site has the fewest lemur observations (around 13). I would assume that estimating density using a strata-specific detection probability would decrease precision, and that's what happens.
However, even when running a global detection probability, where presumably detection is being pooled from all the observations, I still have terrible precision for the degraded site (see attached bar chart).
I could understand that since there are so few observations, but with my examination of annual trends, I'm facing the same problem, when the last year actually has the most observations (32), compared to the other years (see screenshot attached). The first three years, even with less than 30 observations for each year, have perfectly fine precision and confidence intervals, but the last year, with the most observations, has an absolutely horrendous precision estimate.
I don't know what's going on, and I would very much appreciate any help that anyone can give me.