Estimating abundance from multiple sampling capture-recapture data via a multi-state multi-period stopover model
Hannah Worthington, Rachel McCrea, Ruth King, Richard Griffiths

TL;DR
This paper introduces a novel multi-state multi-period stopover model for capture-recapture data that estimates abundance without assuming closure within sampling periods, accommodating movement and individual covariates.
Contribution
The paper develops a new likelihood-based model that explicitly accounts for individual movement and covariates across multiple sampling periods, extending robust design models.
Findings
Model accurately estimates abundance in simulations
Applied to great crested newts dataset demonstrating practical utility
Outperforms traditional models under open population conditions
Abstract
The collection of capture-recapture data often involves collecting data on numerous capture occasions over a relatively short period of time. For many study species this process is repeated, for example annually, resulting in capture information spanning multiple sampling periods. The robust design class of models provide a convenient framework in which to analyse all of the available capture data in a single likelihood expression. However, these models typically rely either upon the assumption of closure within a sampling period (the closed robust design) or condition on the number of individuals captured within a sampling period (the open robust design). The models we develop in this paper require neither assumption by explicitly modelling the movement of individuals into the population both within and between the sampling periods, which in turn permits the estimation of abundance.…
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