Decision rule mining using classification consistency rate

Knowledge-Based Systems(2013)

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摘要
Decision rule mining is an important technique in many applications. In this paper, we propose a new rough set approach for rule induction based on a significance measure, called classification consistency rate. The approach implements the rule induction from the viewpoint of attribute rather than descriptor. The proposed algorithm is tested and compared with LEM2 algorithm on several real-life data sets added with different levels of inconsistent data. The results show that the proposed algorithm is effective in rule induction for inconsistent data.
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关键词
real-life data,different level,new rough set approach,lem2 algorithm,classification consistency rate,decision rule mining,inconsistent data,rule induction,proposed algorithm,important technique,decision rules,rough sets
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