Ecological non-linear state space model selection via adaptive particle Markov chain Monte Carlo (AdPMCMC)
Gareth W. Peters, Geoff R. Hosack, Keith R. Hayes

TL;DR
This paper introduces an advanced Particle Markov chain Monte Carlo algorithm, AdPMCMC, for efficient Bayesian inference in complex non-linear ecological state space models, enabling better model selection and parameter estimation.
Contribution
The paper presents a novel adaptive particle MCMC algorithm that improves sampling efficiency in high-dimensional, multi-modal ecological models with complex likelihood surfaces.
Findings
AdPMCMC outperforms standard algorithms in sampling efficiency.
Observation noise impacts model distinguishability.
Models with Allee effects are harder to select due to noise.
Abstract
We develop a novel advanced Particle Markov chain Monte Carlo algorithm that is capable of sampling from the posterior distribution of non-linear state space models for both the unobserved latent states and the unknown model parameters. We apply this novel methodology to five population growth models, including models with strong and weak Allee effects, and test if it can efficiently sample from the complex likelihood surface that is often associated with these models. Utilising real and also synthetically generated data sets we examine the extent to which observation noise and process error may frustrate efforts to choose between these models. Our novel algorithm involves an Adaptive Metropolis proposal combined with an SIR Particle MCMC algorithm (AdPMCMC). We show that the AdPMCMC algorithm samples complex, high-dimensional spaces efficiently, and is therefore superior to standard…
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Taxonomy
TopicsInsurance, Mortality, Demography, Risk Management · Statistical Methods and Bayesian Inference · Markov Chains and Monte Carlo Methods
