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Proposal for a Statistical Reduct Method for Decision Tables

机译:决策表的统计减排方法提案

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Rough Sets theory is widely used as a method for estimating and/or inducing the knowledge structure of if-then rules from a decision table after a reduct of the table. The concept of the reduct is that of constructing the decision table by necessary and sufficient condition attributes to induce the rules. This paper retests the reduct by the conventional methods by the use of simulation datasets after summarizing the reduct briefly and points out several problems of their methods. Then a new reduct method based on a statistical viewpoint is proposed. The validity and usefulness of the method is confirmed by applying it to the simulation datasets and a UCI dataset. Particularly, this paper shows a statistical local reduct method, very useful for estimating if-then rules hidden behind the decision table of interest.
机译:粗糙集理论被广泛用作估计和/或诱导来自表格减少后从决策表中估算IF-DON规则的知识结构的方法。减少的概念是通过必要和充分条件属性构建决策表以诱导规则。本文通过使用仿真数据集在总结减小后,通过使用仿真数据集来重新测试常规方法,并指出其方法的几个问题。然后提出了一种基于统计观点的新的还原方法。通过将其应用于模拟数据集和UCI数据集来确认该方法的有效性和有用性。特别是,本文显示了一种统计局部减析方法,非常有用,可用于估计隐藏在决定表后面的IF-DEL的规则。

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