Método para Geração de Regras de Classificação Não-Determinística Baseado em Rough Sets
DOI:
https://doi.org/10.5540/tema.2007.08.01.0109Abstract
O objetivo desse trabalho é apresentar um método baseado em Rough Sets, capaz de gerar regras de classificação não-determinística, que permite ao usuário especificar o mínimo de consistência que a regra de classificação terá que satisfazer e somente gerar regras que atendam a este requisito. Isto quer dizer que, neste método, as regras são requeridas para dar suficiente suporte e serem consistentes somente o necessário ao banco de dados.References
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C.M.M.M. Patrício, J.O.P. Pinto, C.C. Souza, Rough sets - Técnica de redução de atributos e geração de regras para classificação de dados, em “XXVIII Congresso Nacional de Matemática Aplicada e Computacional”, São Paulo, SP, 2005.
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