一种新的因果分析关联规则

Zhefu Yu, Huibiao Lu, Chuanying Jia
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引用次数: 1

摘要

讨论了一种新的关联规则算法。它基于minwal(0)和minwal(w)的加权关联规则算法。该算法能够有效地挖掘出将某些属性定义为先行偏,而将另一些属性定义为后向偏的关联规则。新算法还能有效挖掘支持度较低、置信度较高的关联规则,这些关联规则在某些应用中具有较大的意义。
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A New Association Rule for Causes and Effects Analysis
A new association rule algorithm is discussed. It is based on the weighted association rule algorithms of minwal(0) and minwal(w).The new algorithm can effectively mine the association rules which define some attributes as antecedent partial, while others as consequent partial. The new algorithm also can effectively mine the association rules with lower support and high confidence, and these association rules are greater significant in some applications.
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