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RecordNumber
53
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Author
Feng-Tse Lin
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Title of Article
Solving the knapsack problem with imprecise weight coefficients using genetic algorithms
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Title Of Journal
European Journal of Operational Research
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PublishInfo
Elsevier
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Publication Year
2008
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Volum
185
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Issue Number
1
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Page
133-145
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Keywords
Genetic algorithms , Fuzzy sets , Knapsack problem , Fuzzy knapsack problem
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Notes
براي دانلود و مشاهده مقاله به قسمت لينكهاي مرتبط مراجعه نماييد
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Abstract
This paper investigates solving the knapsack problem with imprecise weight coefficients using genetic algorithms. This work is based on the assumption that each weight coefficient is imprecise due to decimal truncation or coefficient rough estimation by the decision-maker. To deal with this kind of imprecise data, fuzzy sets provide a powerful tool to model and solve this problem. We investigate the possibility of using genetic algorithms in solving the fuzzy knapsack problem without defining membership functions for each imprecise weight coefficient. The proposed approach simulates a fuzzy number by distributing it into some partition points. We use genetic algorithms to evolve the values in each partition point so that the final values represent the membership grade of a fuzzy number. The empirical results show that the proposed approach can obtain very good solutions within the given bound of each imprecise weight coefficient than the fuzzy knapsack approach. The fuzzy genetic algorithm concept approach is different, but gives better results than the traditional fuzzy approach.
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URL
http://www.sciencedirect.com/science/article/pii/S0377221707000719,/DL/Data Entry/DataEntryForm/EnterDocInfo.aspx,/DL/Data Entry/NewEdit/Documents/Math_English_Electronic_Articles_EditDoc_925.aspx
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Link To Document :