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A Novel Method of Interestingness Measures for Association Rules Mining Based on Profit

机译:一种基于利润的关联规则挖掘兴趣度度量的新方法

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摘要

Association rules mining is an important topic in the domain of data mining and knowledge discovering. Some papers have presented several interestingness measure methods; the most typical are Support, Confidence, Lift, Improve, and so forth. But their limitations are obvious, like no objective criterion, lack of statistical base, disability of defining negative relationship, and so forth. This paper proposes three new methods, Bi-lift, Bi-improve, and Bi-confidence, for Lift, Improve, and Confidence, respectively. Then, on the basis of utility function and the executing cost of rules, we propose interestingness function based on profit (IFBP) considering subjective preferences and characteristics of specific application object. Finally, a novel measure framework is proposed to improve the traditional one through experimental analysis. In conclusion, the new methods and measure framework are prior to the traditional ones in the aspects of objective criterion, comprehensive definition, and practical application.
机译:关联规则挖掘是数据挖掘和知识发现领域中的重要主题。一些论文提出了几种兴趣度测量方法。最典型的是支持,信心,提升,改善等。但是它们的局限性是显而易见的,例如没有客观标准,缺乏统计基础,无法定义负面关系等等。本文针对提升,改善和自信心分别提出了三种新方法,即Bi-lift,Bi-improve和Bi-confidence。然后,在效用函数和规则执行成本的基础上,结合主观偏好和特定应用对象的特点,提出了基于利润的兴趣函数(IFBP)。最后,提出了一种新的测量框架,通过实验分析来改进传统的测量框架。综上所述,在客观标准,综合定义和实际应用等方面,新方法和测度框架均优于传统方法和测度框架。

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