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Analyzing Behavior of Objective RuleEvaluation Indices Based on Pearson Product-Moment Correlation Coefficient

机译:基于皮尔逊积矩相关系数的客观规则评价指标行为分析

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In this paper, we present an analysis of behavior of objective rule evaluation indices on classification rule sets using Pearson product-moment correlation coefficients between each index. To support data mining post-processing, which is one of important procedures in a data mining process, at least 40 indices are proposed to find out valuable knowledge. However, their behavior have never been clearly articulated. Therefore, we carried out a correlation analysis between each objective rule evaluation indices. In this analysis, we calculated average values of each index using bootstrap method on 32 classification rule sets learned with information gain ratio. Then, we found the following relationships based on the correlation coefficient values: similar pairs, discrepant pairs, and independent indices. With regarding to this result, we discuss about relative functional relationships between each group of objective indices.
机译:在本文中,我们使用每个指标之间的Pearson乘积矩相关系数,对分类规则集上的客观规则评估指标的行为进行了分析。为了支持数据挖掘后处理(这是数据挖掘过程中的重要过程之一),建议至少使用40个索引来发现有价值的知识。但是,他们的行为从未明确阐明。因此,我们在每个目标规则评估指标之间进行了相关分析。在此分析中,我们使用自举方法对以信息增益率学习的32个分类规则集计算了每个索引的平均值。然后,我们根据相关系数值找到以下关系:相似对,差异对和独立索引。关于这个结果,我们讨论了每组客观指标之间的相对功能关系。

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