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A User-Driven Association Rule Mining Based on Templates for Multi-Relational Data

机译:基于模板的多关系数据的用户驱动关联规则挖掘

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Data mining algorithms to find association rules are an important tool to extract knowledge from databases. However, these algorithms produce an enormous amount of rules, many of which could be redundant or irrelevant for a specific decision-making process. Also, the use of previous knowledge and hypothesis are not considered by these algorithms. On the other hand, most existing data mining approaches look for patterns in a single data table, ignoring the relations presented in relational databases. The contribution of this paper is the proposition of a multi-relational data mining algorithm based on association rules, called TBMR-Radix, which considers previous knowledge and hypothesis through the using of the Templates technique. Applying this approach over two real databases, we were able to reduce the number of generated rules, use the existing knowledge about the data and reduce the waste of computational resources while processing. Our experiments show that the developed algorithm was also able to perform in a multi-relational environment, while the MR-Radix, that does not use Templates technique, was not.
机译:查找关联规则的数据挖掘算法是从数据库提取知识的重要工具。但是,这些算法会产生大量规则,其中许多规则对于特定决策过程可能是多余的或无关紧要的。而且,这些算法未考虑使用先前的知识和假设。另一方面,大多数现有的数据挖掘方法都在单个数据表中查找模式,而忽略了关系数据库中呈现的关系。本文的贡献是提出了一种基于关联规则的,称为TBMR-Radix的多关系数据挖掘算法,该算法通过使用Templates技术考虑了先前的知识和假设。将这种方法应用于两个真实的数据库,我们能够减少生成规则的数量,使用有关数据的现有知识,并减少处理过程中计算资源的浪费。我们的实验表明,开发的算法还能够在多关系环境中执行,而未使用模板技术的MR-Radix则不能。

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