Modelling group dynamic animal movement
Roland Langrock, J. Grant C. Hopcraft, Paul G. Blackwell, Victoria, Goodall, Ruth King, Mu Niu, Toby A. Patterson, Martin W. Pedersen, Anna, Skarin, Robert S. Schick

TL;DR
This paper introduces a flexible hidden Markov model framework to analyze animal group movement, effectively capturing social influences on individual movement decisions, demonstrated through reindeer data.
Contribution
It develops a novel modeling approach that separates group-level and individual-level movement, improving understanding of social influences in animal movement models.
Findings
Model accurately captures group-influenced movement dynamics.
Reindeer show a directional bias towards the group centroid.
Model outperforms traditional correlated random walk models.
Abstract
Group dynamic movement is a fundamental aspect of many species' movements. The need to adequately model individuals' interactions with other group members has been recognised, particularly in order to differentiate the role of social forces in individual movement from environmental factors. However, to date, practical statistical methods which can include group dynamics in animal movement models have been lacking. We consider a flexible modelling framework that distinguishes a group-level model, describing the movement of the group's centre, and an individual-level model, such that each individual makes its movement decisions relative to the group centroid. The basic idea is framed within the flexible class of hidden Markov models, extending previous work on modelling animal movement by means of multi-state random walks. While in simulation experiments parameter estimators exhibit some…
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