Animal Movement Models with Mechanistic Selection Functions
Mevin B. Hooten, Xinyi Lu, Martha J. Garlick, James A. Powell

TL;DR
This paper develops generalized point process models for animal movement data, linking resource selection analysis with mechanistic models, and demonstrates their application using mountain lion telemetry data to understand movement behavior.
Contribution
It introduces a flexible framework for spatio-temporal point process models that unify resource selection and mechanistic movement models, enhancing inference and ecological understanding.
Findings
Generalized likelihood for resource selection models.
Spatio-temporal models align with mechanistic PDE-based movement.
Application to mountain lion data reveals environmental effects on movement.
Abstract
A suite of statistical methods are used to study animal movement. Most of these methods treat animal telemetry data in one of three ways: as discrete processes, as continuous processes, or as point processes. We briefly review each of these approaches and then focus in on the latter. In the context of point processes, so-called resource selection analyses are among the most common way to statistically treat animal telemetry data. However, most resource selection analyses provide inference based on approximations of point process models. The forms of these models have been limited to a few types of specifications that provide inference about relative resource use and, less commonly, probability of use. For more general spatio-temporal point process models, the most common type of analysis often proceeds with a data augmentation approach that is used to create a binary data set that can…
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