Grey decision rules for interval MADA based on rough set theory

Based on rough set theory, a new decision rule for information system with interval numbers is proposed. First the interval values are discretized through an improved rough clustering algorithm. Then the redundant set of attributes is obtained by constituting homogenous matrix. Then, after a part of...

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Bibliographic Details
Published inProceedings of 2011 IEEE International Conference on Grey Systems and Intelligent Services pp. 866 - 869
Main Authors Xie Ming, Xiao Xinping
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.09.2011
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ISBN9781612844909
1612844901
ISSN2166-9430
DOI10.1109/GSIS.2011.6044130

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Summary:Based on rough set theory, a new decision rule for information system with interval numbers is proposed. First the interval values are discretized through an improved rough clustering algorithm. Then the redundant set of attributes is obtained by constituting homogenous matrix. Then, after a part of decision rules have been generated, we propose grey decision rules that are useful in inducing rules after referring to preference-classified data tables based on grey relational analysis. To obtain weights of attribute, the reciprocal matrix which can avoid the influence of subjective factors, is constituted according to the definition of relative significance between two attributes, and then an optimal model connected with the reciprocal matrix is solved by genetic algorithm. Through contrastive analysis with back propagation (BP) neural network on stapling training planes, it is shown that the grey decision rules are more efficient than BP neural network.
ISBN:9781612844909
1612844901
ISSN:2166-9430
DOI:10.1109/GSIS.2011.6044130