A time-dependent extension of the projected normal regression model for longitudinal circular data based on a hidden Markov heterogeneity structure

A Maruotti, A Punzo, G Mastrantonio… - … Research and Risk …, 2016 - Springer
Stochastic Environmental Research and Risk Assessment, 2016Springer
The modelling of animal movement is an important ecological and environmental issue. It is
well-known that animals change their movement patterns over time, according to observable
and unobservable factors. To trace the dynamics of behaviors, to identify factors influencing
these dynamics and unobserved characteristics driving intra-subjects correlations, we
introduce a time-dependent mixed effects projected normal regression model. A set of
animal-specific parameters following a hidden Markov chain is introduced to deal with …
Abstract
The modelling of animal movement is an important ecological and environmental issue. It is well-known that animals change their movement patterns over time, according to observable and unobservable factors. To trace the dynamics of behaviors, to identify factors influencing these dynamics and unobserved characteristics driving intra-subjects correlations, we introduce a time-dependent mixed effects projected normal regression model. A set of animal-specific parameters following a hidden Markov chain is introduced to deal with unobserved heterogeneity. For the maximum likelihood estimation of the model parameters, we outline an expectation–maximization algorithm. A large-scale simulation study provides evidence on model behavior. The data analysis approach based on the proposed model is finally illustrated by an application to a dataset, which derives from a population of Talitrus saltator from the beach of Castiglione della Pescaia (Italy).
Springer
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