Hi All.
I have been using Presence to estimate species richness while accounting for detectability. I have 120 sites with 6 visits each with 60 species detected and 10 more that I think should exist in species pool but have not been detected in my sample. Many of the species are rare and have low detectability. I have tried running this with and without species with no detections (i.e. species that should exist in species pool but have not been detected in my actual data).
Running Presence using a model with species entered via dummy variable coding I have been able to get a solution that has a stable solution (i.e. Numerical convergence was reached - although variance/ covariance matrix was not computed successfully). However, many of the rare species (single detection quite often) have very high positive parameter estimates resulting in a predicted occupancy rate of 1 which is not possible.
Any suggestions on how to get realistic estimates of occupancy for these species? Talking the inverse for rare species gets you a value that is more realistic for rare species (i.e. occupancy rate much closer to zero) and provides a richness estimate that is believable. Ultimately I want to model the effects of habitat covariates and compare model fit using AIC but want to make sure that the fit derived simply for a "species matrix" is a valid starting point for comparison.
Thanks in advance for any advice
Erin Bayne