Semi-Markov Arnason-Schwarz models
Ruth King, Roland Langrock

TL;DR
This paper introduces semi-Markov extensions to the Arnason-Schwarz model for capture-recapture data, allowing more flexible modeling of state dwell times with minimal additional parameters, enabling better biological inference.
Contribution
The paper extends the Arnason-Schwarz model by incorporating semi-Markov processes, providing a flexible yet computationally tractable approach to model state durations in capture-recapture data.
Findings
Semi-Markov models improve biological inference on state durations.
The approach is computationally feasible with modest parameter increase.
Application to real data demonstrates practical utility.
Abstract
We consider multi-state capture-recapture-recovery data where observed individuals are recorded in a set of possible discrete states. Traditionally, the Arnason-Schwarz model has been fitted to such data where the state process is modeled as a first-order Markov chain, though second-order models have also been proposed and fitted to data. However, low-order Markov models may not accurately represent the underlying biology. For example, specifying a (time-independent) first-order Markov process assumes that the dwell time in each state (i.e., the duration of a stay in a given state) has a geometric distribution, and hence that the modal dwell time is one. Specifying time-dependent or higher-order processes provides additional flexibility, but at the expense of a potentially significant number of additional model parameters. We extend the Arnason-Schwarz model by specifying a semi-Markov…
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Taxonomy
TopicsCensus and Population Estimation · Wildlife Ecology and Conservation · Bayesian Methods and Mixture Models
