martin13 wrote:I just read in White 2002 (Journal of Applied Statistics) that it is not possible to directly model N as a function of covariates using Program MARK. It seems that the best one can do is to split data into groups and compare N's, and the associated CI's, among those groups, as well as use closed modeling AIC to determine if including a grouped N increases model fit. I am conducting an analysis where it would be highly beneficial to analyze population estimates in the context of multiple habitat covariates (a la, an ANOVA). There are obvious problems with simply taking the population estimates that MARK spits out and plugging them into another statistical analysis (i.e., the population estimates are exactly that... estimates with CI's, as opposed to actual values), but I don't know what else to do. Is there another software package out there that handles this type of analysis? Am I stuck exporting the MARK estimates into another analysis and ignoring their associated error values? Is my only option to compare N's among grouped data? If this is the case, what if there are multiple variables that influence N or interaction terms? Any suggestions or advice would be greatly appreciated!
martin13 wrote:I've looked at the Huggin's estimators, however I believe according to White (2002) these don't directly model N as a function of the covariates... at least in program MARK. The covariates are entered as part of the initial dataset in MARK and are used to model f(sub 0)=N(hat) - M(t+1). This indirectly models N(hat) as well, I suppose. Does this ultimately make a difference? Or is there another software package that you could suggest to estimate N directly in the context of habitat covariates? To quote Gary White, "Incorporation of covariates to model N(hat) is not possible directly in software packages such as MARK". Thanks.[/code]
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