2023
DOI: 10.1111/faf.12802
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Identifying priority areas for spatial management of mixed fisheries using ensemble of multi‐species distribution models

Diego Panzeri,
Tommaso Russo,
Enrico Arneri
et al.

Abstract: Spatial fisheries management is widely used to reduce overfishing, rebuild stocks, and protect biodiversity. However, the effectiveness and optimization of spatial measures depend on accurately identifying ecologically meaningful areas, which can be difficult in mixed fisheries. To apply a method generally to a range of target species, we developed an ensemble of species distribution models (e‐SDM) that combines general additive models, generalized linear mixed models, random forest, and gradient‐boosting mach… Show more

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Cited by 6 publications
(1 citation statement)
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“…Algorithmic representations are employed to accurately depict the natural habitats of these species. According to Lee et al (2020) [25], arithmetic and geometric mean models, which rely on the habitat suitability index (SI), possess some drawbacks. These disadvantages include sensitivity to outliers, inapplicability to zero and negative values, and unsuitability for modelling exponential development.…”
Section: Introductionmentioning
confidence: 99%
“…Algorithmic representations are employed to accurately depict the natural habitats of these species. According to Lee et al (2020) [25], arithmetic and geometric mean models, which rely on the habitat suitability index (SI), possess some drawbacks. These disadvantages include sensitivity to outliers, inapplicability to zero and negative values, and unsuitability for modelling exponential development.…”
Section: Introductionmentioning
confidence: 99%