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*** Three hierarchical modeling email lists ***
(1) unmarked (this list): for questions specific to the R package unmarked
(2) SCR: for design and Bayesian or non-bayesian analysis of spatial capture-recapture
(3) HMecology: for everything else, especially material covered in the books by Royle & Dorazio (2008), Kéry & Schaub (2012), Kéry & Royle (2016, 2021) and Schaub & Kéry (2022)
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Dear Coral,
you don’t need to backtransform the predictions: predict() in unmarked yields predicted values on the natural, rather than the link, scale. Attached is an example with a static occupancy model from Chapter 10 in the AHM1 book; see also https://github.com/mikemeredith/AHM_code
But note that you will still want to backtransform the covariate values, since nobody is interested in a plot with, say, scaled rainfall on the x axis.
Best regards --- Marc
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Dear Ken,
thanks for the important addition. And sometimes, when we have some time, we ought perhaps to collect such tipps on some website for unmarked 😊
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