Mesedez, erabili identifikatzaile hau item hau aipatzeko edo estekatzeko: http://dspace.azti.es/handle/24689/295
Item honetako fitxategiak:
Fitxategia TamainaFormatua 
evaluating machine-learning.pdf2,36 MBAdobe PDFBistaratu/Ireki
Titulua: Evaluating machine-learning techniques for recruitment forecasting of seven North East Atlantic fish species
Egilea: Fernandes, Jose A.; Irigoien, Xabier; Lozano, Jose A.; Inza, Inaki; Goikoetxea, Nerea; Perez, Aritz
Zitazioa: ECOLOGICAL INFORMATICS, 2015, 25, 35-42
Laburpena: The effect of different factors (spawning biomass, environmental conditions) on recruitment is a subject of great importance in the management of fisheries, recovery plans and scenario exploration. In this study, recently proposed supervised classification techniques, tested by the machine-learning community, are applied to forecast the recruitment of seven fish species of North East Atlantic (anchovy, sardine, mackerel, horse mackerel, hake, blue whiting and albacore), using spawning, environmental and climatic data. In addition, the use of the probabilistic flexible naive Bayes classifier (FNBC) is proposed as modelling approach in order to reduce uncertainty for fisheries management purposes. Those improvements aim is to improve probability estimations of each possible outcome (low, medium and high recruitment) based in kernel density estimation, which is crucial for informed management decision making with high uncertainty. Finally, a comparison between goodness-of-fit and generalization power is provided, in order to assess the reliability of the final forecasting models. It is found that in most cases the proposed methodology provides useful information for management whereas the case of horse mackerel is an example of the limitations of the approach. The proposed improvements allow for a better probabilistic estimation of the different scenarios, i.e. to reduce the uncertainty in the provided forecasts. (C) 2014 Elsevier B.V. All rights reserved.
Gako-hitzak: Pelagic fish; Fisheries management; Recruitment forecasting; Bayesian networks; Supervised classification; Kernel density estimation; ANCHOVY ENGRAULIS-ENCRASICOLUS; BISCAY ANCHOVY; BAY; ENVIRONMENT; CLASSIFICATION; CLASSIFIERS; PREDICTION; VARIABLES; MODEL
Gordailuaren-data: 2015
Argitalpen: ELSEVIER SCIENCE BV
Dokumentu mota: Article
Hizkuntza: Ingelesa
DOI: 10.1016/j.ecoinf.2014.11.004
URI: http://dspace.azti.es/handle/24689/295
ISSN: 1574-9541
E-ISSN: 1878-0512
Babeslea: Fundacion Centros Tecnologicos Inaki Goenaga
Department of Agriculture, Fisheries and Food of the Basque Country Government
Saiotek and Research Groups programs (Basque Government) \[IT-242-07]
Spanish Ministry of Education and Science \[TIN2008-06815-C02-01]
COMBIOMED network in computational biomedicine (Carlos III Health Institute)
EU project UNCOVER
EU FACT
EU VII Framework project MEECE (MEECE) \[212085]
Bildumetan azaltzen da:Artículos científicos



DSpaceko itemak copyright bidez babestuta daude, eskubide guztiak gordeta, baldin eta kontrakoa adierazten ez bada.