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A NOVEL KNOWLEDGE REDUCTION METHOD BASED ON RANK COR-RELATION ANALYSIS

机译:基于Rank Cor-Mritoation分析的新颖知识减少方法

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Dominance-based rough set approach has recently become a routine method to deal with preference-ordered data, and knowledge reduction method based on rough set theory has been proposed. However, the results obtained are usually short of statistical significance. In this paper, non- parametric methods in statistics are introduced to analyze ordered information systems and ordered decision tables. Spearman and Kendall rank correlation coefficient are respectively used as new measures of attribute sets correlation. Based on these measures, a new method of knowledge reduction of the ordered information systems and the ordered decision tables using nonparametric rank statistics is presented. It can be proved that there are some relationships between the rough set theory and the nonparametric statistical methods. The numerical experiments show that the approach proposed is feasible, and it can provide a statistical evidence for rough set method.
机译:基于优势的粗糙集方法最近成为处理优先订购数据的例行方法,并提出了基于粗糙集理论的知识减少方法。然而,所获得的结果通常缺乏统计学意义。在本文中,引入了统计中的非参数方法来分析有序信息系统和有序决策表。 Spearman和Kendall等级相关系数分别用作属性集合相关的新措施。基于这些措施,介绍了一种新的知识方法,减少了有序信息系统和使用非参数级别统计信息的订购决策表。可以证明粗糙集理论与非参数统计方法之间存在一些关系。数值实验表明,提出的方法是可行的,它可以为粗糙集法提供统计证据。

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