Improved order selection method for hidden Markov models: a case study with movement data
Fanny Dupont, Marianne Marcoux, Nigel Hussey, Marie Auger-M\'eth\'e

TL;DR
This paper introduces a novel double penalized likelihood method for selecting the number of hidden states in non-stationary HMMs, improving accuracy over traditional criteria especially under model misspecification.
Contribution
The paper proposes the DPMLE approach, a new method for simultaneous estimation of states and parameters in non-stationary HMMs, outperforming AIC and BIC.
Findings
DPMLE outperforms AIC and BIC in simulation studies.
DPMLE effectively handles non-stationary dynamics in movement data.
Application to narwhal data reveals more realistic behavioral insights.
Abstract
Hidden Markov models (HMMs) are a versatile statistical framework commonly used in ecology to characterize behavioural patterns from animal movement data. In HMMs, the observed data depend on a finite number of underlying hidden states, generally interpreted as the animal's unobserved behaviour. The number of states is a crucial parameter, controlling the trade-off between ecological interpretability of behaviours (fewer states) and the goodness of fit of the model (more states). Selecting the number of states, commonly referred to as order selection, is notoriously challenging. Common model selection metrics, such as AIC and BIC, often perform poorly in determining the number of states, particularly when models are misspecified. Building on existing methods for HMMs and mixture models, we propose a double penalized likelihood maximum estimate (DPMLE) for the simultaneous estimation of…
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Taxonomy
TopicsSpeech and Audio Processing · Bayesian Methods and Mixture Models
