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Decision Table Reduction Method Based on New Conditional Entropy for Rough Set Theory

机译:粗糙集理论的基于新条件熵的决策表约简方法

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Some disadvantages should be discussed deeply for the current reduction algorithms. To eliminate these limitations of classical algorithms based on positive region and conditional information entropy, a new conditional entropy, which could reflect the change of decision ability objectively, was defined with separating consistent objects form inconsistent objects. To select optimal attribute reduction, the judgment theorem of reduction with an inequality was investigated. Condition attributes were considered to estimate the significance for decision classes, and a complete heuristic algorithm was designed and implemented. Finally, through analyzing the given example, the proposed heuristic information is better and more efficient than the others. Comparing the proposed algorithm with these current algorithms through discrete data sets from UCI Machine Learning Repository, the experimental results prove its validity, which enlarges the applied area of rough set.
机译:对于当前的归约算法,应深入讨论一些缺点。为了消除基于正区域和条件信息熵的经典算法的这些局限性,定义了一种新的条件熵,该条件熵可以客观地反映决策能力的变化,将一致的对象与不一致的对象分开。为了选择最佳属性约简,研究了具有不等式的约简判断定理。考虑使用条件属性来估计决策类的重要性,并设计并实现了完整的启发式算法。最后,通过分析给定的示例,所提出的启发式信息比其他示例更好,更有效。通过UCI机器学习存储库中的离散数据集,将该算法与当前算法进行比较,实验结果证明了该算法的有效性,从而扩大了粗糙集的应用范围。

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