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dc.contributor.author Drews Junior, Paulo Lilles Jorge
dc.contributor.author Bauer, Matheus
dc.contributor.author Santos, Karina Machado dos
dc.contributor.author Melo, Pedro Puciarelli de
dc.contributor.author Dumont, Luiz Felipe Cestari
dc.date.accessioned 2016-01-19T15:52:27Z
dc.date.available 2016-01-19T15:52:27Z
dc.date.issued 2014
dc.identifier.citation DREWS JUNIOR, Paulo Lilles Jorge et al. A machine learning approach to predict the pink shrimp harvest in the Patos Lagoon estuar, 2014. IN: SYMPOSIUM ON KNOWLEDGE DISCOVERY, MINING AND LEARNING - KDMILE , 2, 2014, São Carlos. Anais... São Paulo, 2014. Disponível em: <https://www.researchgate.net/publication/282862233_A_Machine_Learning_Approach_to_Predict_the_Pink_Shrimp_Harvest_in_the_Patos_Lagoon_Estuary>. Acesso em 18 Jan 2016. pt_BR
dc.identifier.uri http://repositorio.furg.br/handle/1/5815
dc.description.abstract This paper presents a novel methodology to predict the natural behavior of pink shrimp (Farfantepenaeus paulensis) harvest, in the Patos Lagoon Estuary (PLE) by using supervised machine learning. This prediction is a critical task due to its environmental, economic and social impact. Supervised machine learning algorithms such as Support Vector Machines (SVM), decision trees and rules learning were combined with meta-learning techniques to perform the discrete prediction of the harvest. Performance of several classifiers is evaluated by a set of metrics, especially by a specific metric to deal with the inherent relation of order between the classes. The official harvest data, provided by government agencies, may be affected by random and systemic errors caused mainly by illegal fishing and lack of efficient landing control. These errors, together with the lack of knowledge of the fishing effort employed, increase the difficulty of the prediction task. Results obtained using meta-learning techniques combined with classic algorithms reached an accuracy of 91% for the pink shrimp harvest prediction. pt_BR
dc.language.iso eng pt_BR
dc.rights open access pt_BR
dc.subject Shrimp prediction pt_BR
dc.subject Meta learning pt_BR
dc.subject Supervised learning pt_BR
dc.title A machine learning approach to predict the pink shrimp harvest in the Patos Lagoon estuary pt_BR
dc.type conferenceObject pt_BR


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