IEEJ Transactions on Electronics, Information and Systems
Online ISSN : 1348-8155
Print ISSN : 0385-4221
ISSN-L : 0385-4221
<Neural Network, Fuzzy and Chaos Systems>
Class Association Rule Mining from Incomplete Database Using Genetic Network Programming
Kaoru ShimadaShingo MabuEiji MorikawaKotaro HirasawaTakayuki Furuzuki
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2008 Volume 128 Issue 5 Pages 795-803

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Abstract
A method of class association rule mining from incomplete databases is proposed using Genetic Network Programming (GNP). GNP is one of the evolutionary optimization techniques, which uses the directed graph structure. An incomplete database includes missing data in some tuples, however, the proposed method can extract important rules using these tuples, and users can define the conditions of important rules flexibly. Generally, it is not easy for Aprior-like methods to extract important rules from incomplete database, so we have estimated the performances of the rule extraction and classification of the proposed method using incomplete data set. The results showed that the accuracy of classification of the proposed method is favorable even if some tuples include missing data.
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© 2008 by the Institute of Electrical Engineers of Japan
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