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An Attribute Reduction Algorithm in Rough Set Theory Based on Information Entropy

机译:基于信息熵的粗糙集理论中的属性减少算法

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摘要

Rough set theory is an effective approach to imprecision, vagueness and incompleteness in classification analysis and knowledge discovery. Attribute reduction and relative attribute reduction are the core of KDD. From the point of view of information, the basic concepts of rough set were analyzed in this paper. A novel attribute reduction algorithm was constructed by adopting conditional entropy and the improved importance of attribute. This algorithm does not calculate the attribute core but directly reduces the original attribute set. The performance of this algorithm was compared with that of the old algorithm based on mutual information by using some classical databases in the UCI repository. Finally, the validity and the feasibility of the algorithm are demonstrated by the experiment results.
机译:粗糙集理论是分类分析和知识发现中不精确,模糊性和不完整的有效方法。属性减少和相对属性减少是KDD的核心。从信息的角度来看,本文分析了粗糙集的基本概念。通过采用条件熵和改进属性的重要性来构建新的属性还原算法。此算法不计算属性核心,但直接减少原始属性集。通过在UCI存储库中使用一些经典数据库,将该算法的性能与基于互信息的旧算法进行了比较。最后,通过实验结果证明了算法的有效性和可行性。

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