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Logical Identities Applied to Knowledge Discovery in Databases

机译:逻辑身份应用于数据库中的知识发现

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Data mining is the process of extracting implicit, previously unknown, and potentially useful information from data in databases. It is widely recognized as a useful tool for decision making and knowledge discovery. Rule mining, however, is computationally expensive. Moreover, certain mathematical properties of mined rules have been given little attention. This paper applies logical identities to mined rules thereby producing additional rules that are much more efficiently acquired. We use simple properties of set theory to present a set of theorems applicable to association rules, and by using the support and confidence of mined association rules, we produce new association rules, each with its own support and confidence.
机译:数据挖掘是从数据库中的数据中提取隐式,先前未知且可能有用的信息的过程。它被广泛认为是决策和知识发现的有用工具。然而,规则挖掘在计算上是昂贵的。而且,对挖掘规则的某些数学性质的关注很少。本文将逻辑身份应用于挖掘的规则,从而生成可以更有效地获取的其他规则。我们使用集合论的简单性质来提出适用于关联规则的一组定理,并且通过使用挖掘的关联规则的支持和置信度,我们生成新的关联规则,每个规则都有自己的支持和置信度。

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