Production and Retrieval of Rough Classes in Multi Relations
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2007
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Ieee Computer Soc
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Abstract
Organizational memory in today's business world forms basis for organizational learning, which is the ability of an organization to gain insight and understanding from experience through experimentation, observation, analysis, and a willingness to examine both successes and failures. This basically requires consideration of different aspects of knowledge that may reside on top of a conventional information management system. Of them, representation, retrieval and production issues of meta patterns constitute to the main theme of this article. Particularly we are interested in a formal approach to handle rough concepts. We utilize rough classifiers to propose a preliminary framework based on minimal term sets with p-norms to extract meta patterns. We describe a relational rule induction approach, which is called rila. Experimental results are provided on the mutagenesis, and the KDD Cup 2001 genes data sets. © 2007 IEEE.
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IEEE Computational Intelligence Society (CIS)
Tolun, Mehmet Resit/0000-0002-8478-7220
Tolun, Mehmet Resit/0000-0002-8478-7220
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Classifier, Logic, Optimistic Estimate Pruning, P-Norm Retrieval, Relational Rule Induction, Rough Sets, Rule Selection Strategies
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Proceedings - 2007 IEEE International Conference on Granular Computing, GrC 2007 -- 2007 IEEE International Conference on Granular Computing, GrC 2007 -- 2 November 2007 through 4 November 2007 -- San Jose, CA -- 72548
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Start Page
192
End Page
198
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