2024
DOI: 10.1002/ecs2.4751
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Evidence from interpretable machine learning to inform spatial management of Palau's tuna fisheries

Eric Gilman,
Milani Chaloupka

Abstract: Static and dynamic area‐based management tools hold substantial potential to balance socioeconomic benefits derived from fisheries and costs from bycatch mortality of at‐risk species. Palau longline fisheries have high bycatch of at‐risk species including the olive ridley marine turtle and silky and blue sharks. This study analyzed a two decades‐long time series of observer and electronic monitoring datasets from the Palau distant‐water and locally‐based pelagic longline fisheries. An interpretable or explaina… Show more

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