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Research on Mining Positive and Negative Association Rules Based on Dual Confidence

机译:基于双重信道的挖掘积极与负关联规则研究

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Mining of association rules has become an important area in the research on data mining. However the traditional approaches based on support-confidence framework maybe generate a great number of redundant and wrong association rules. In order to solve the problems, a correlation measure is defined and added to the mining algorithm for association rules. According to the value of correlation measure, association rules are classified into positive and negative association rules. Therefore, the new algorithm can mine the negative-item-contained rules. In the paper, the algorithm which based on the correlation and dual confidence, can mine the positive and negative association rules. The experimental result shows that positive and negative association rules mining algorithm can reduce the scale of meaningless association rules, and mine a lot of interesting negative association rules.
机译:挖掘协会规则已成为数据挖掘研究的重要领域。然而,基于支持置信框架的传统方法可能会产生大量的冗余和错误的关联规则。为了解决问题,定义了相关性并将其添加到关联规则的挖掘算法中。根据相关措施的价值,关联规则分为正面和负关联规则。因此,新算法可以挖掘否定项包含的规则。在本文中,基于相关性和双重信心的算法可以挖掘正面和负关联规则。实验结果表明,积极和负关联规则挖掘算法可以减少毫无意义的关联规则的规模,并挖掘了很多有趣的负关联规则。

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