momentuHMM: R package for generalized hidden Markov models of animal movement
Brett T. McClintock, Theo Michelot

TL;DR
The momentuHMM R package provides advanced tools for modeling animal movement using hidden Markov models, addressing common telemetry data challenges with flexible, user-friendly features.
Contribution
It introduces a comprehensive R package that extends existing HMM software with new capabilities for animal movement analysis, including handling complex data and covariates.
Findings
Enhanced modeling of animal movement behaviors.
Supports complex data streams and covariate integration.
Facilitates realistic, hypothesis-driven analyses.
Abstract
Discrete-time hidden Markov models (HMMs) have become an immensely popular tool for inferring latent animal behaviors from telemetry data. Here we introduce an open-source R package, momentuHMM, that addresses many of the deficiencies in existing HMM software. Features include: 1) data pre-processing and visualization; 2) user-specified probability distributions for an unlimited number of data streams and latent behavior states; 3) biased and correlated random walk movement models, including "activity centers" associated with attractive or repulsive forces; 4) user-specified design matrices and constraints for covariate modelling of parameters using formulas familiar to most R users; 5) multiple imputation methods that account for measurement error and temporally-irregular or missing data; 6) seamless integration of spatio-temporal covariate raster data; 7) cosinor and spline models for…
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