A colleague and I are running multi-season models in PRESENCE where we are interested in relating occupancy of certain animal species to various site-specific habitat covariates. We are experiencing many convergence problems and large beta estimates and standard errors for many of our study species. We've played around with different initial values for our betas, transformations of our data, etc. from remedies posted on the forum.
It seems we might be having most problems when tree canopy cover percentages and densities of particular tree species are used as covariates. We are working in a savanna-type landscape where these covariates are highly skewed (many very low values in the predominate open grassland and a few high values near / under trees) -- this skewness remains despite z and arcsin transformations of those covariates and elimination of "outliers". Has anyone experienced similar problems with such covariate data? Any suggestions? Should we throw out these covariates altogether?
Thanks for any help