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Título : Machine Learning Applications for Fisheries-At Scales from Genomics to Ecosystems
Autor : Kuehn, Bernhard; Cayetano, Arjay; Fincham, Jennifer I.; Moustahfid, Hassan; Sokolova, Maria; Trifonova, Neda; Watson, Jordan T.; Fernandes, Jose A.; Uusitalo, Laura
Resumen : Fisheries science aims to understand and manage marine natural resources. It relies on resource-intensive sampling and data analysis. Within this context, the emergence of machine learning (ML) systems holds significant promise for understanding disparate components of these marine ecosystems and gaining a greater understanding of their dynamics. The goal of this paper is to present a review of ML applications in fisheries science. It highlights both their advantages over conventional approaches and their drawbacks, particularly in terms of operationality and possible robustness issues. This review is organized from small to large scales. It begins with genomics and subsequently expands to individuals (catch items), aggregations of different species in situ, on-board processing, stock/populations assessment and dynamics, spatial mapping, fishing-related organizational units, and finally ecosystem dynamics. Each field has its own set of challenges, such as pre-processing steps, the quantity and quality of training data, the necessity of appropriate model validation, and knowing where ML algorithms are more limited, and we discuss some of these discipline-specific challenges. The scope of discussion of applied methods ranges from conventional statistical methods to data-specific approaches that use a higher level of semantics. The paper concludes with the potential implications of ML applications on management decisions and a summary of the benefits and challenges of using these techniques in fisheries.
Palabras clave : Marine science; monitoring; management; BAYESIAN BELIEF NETWORKS; LIFE-HISTORY PARAMETERS; ECOLOGICAL BIG DATA; SPECIES IDENTIFICATION; SEASCAPE GENETICS; CROSS-VALIDATION; CLIMATE-CHANGE; ATLANTIC COD; FISH; MODEL
Fecha de publicación : 2024
Editorial : TAYLOR \& FRANCIS INC
Tipo de documento: Review; Early Access
Idioma: 
DOI: 10.1080/23308249.2024.2423189
URI : http://dspace.azti.es/handle/24689/1901
ISSN : 2330-8249
E-ISSN: 2330-8257
Patrocinador: H2020 project PANDORA [773713]
H2020 project SEAwise [101000318]
H2020 project SusTunTech [869342]
H2020 project FutureMARES [869300]
H2020 project OBAMA-NEXT [101081642]
H2020 project OptiFish [101136674]
BioBoost+project within the Biodiversa+European Biodiversity Partnership program
European Union
Aparece en las tipos de publicación: Artículos científicos



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