Multiple-Step Rule Discovery for Associative Classification

Artificial Intelligence and Computational Intelligence, 2009. AICI '09. International Conference(2009)

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摘要
Associative classification has shown great promise over many other classification techniques. However, one of the major problems of using association rule mining for associative classification is the very large search space of possible rules which usually leads to a very complex rule discovery process. This paper proposes a multiple-step rule discovery approach for associative classification called Mstep-AC. The proposed Mstep-AC approach focuses on discovering effective rules for data samples that might cause misclassification in order to enhance classification accuracy. Although the rule discovery process in Mstep-AC is performed multiple times to mine effective rules, its complexity is comparable with conventional associative classification approach. In this paper, we present the proposed Mstep-AC approach and its performance evaluation.
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关键词
complex rule discovery process,association rule mining,possible rule,multiple-step rule discovery,classification technique,associative classification,proposed mstep-ac approach,multiple-step rule discovery approach,rule discovery process,data mining,classification accuracy,associativeclassification,conventional associative classification approach,effective rule,mstep-ac,search space,accuracy,association rules,classification algorithms,memory management
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