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OntGAR algorithm: An ontology-based algorithm for mining generalized association rules

机译:OntGAR算法:一种用于挖掘广义关联规则的基于本体的算法

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Most of the approaches in mining generalized association rules are focused in the extracting patterns stage, using extended transactions, and simple taxonomies. A great problem of these works is related to the generation of large amounts of candidates and rules. Beyond that, the use of taxonomies may generate some limitations like absence of formalism, problems of reuse and sharing. In this sense, this paper proposes a new algorithm for mining generalized association rules. The originality of this work is on the fact of the generalization being done in the post-processing stage and under all levels of ontologies, which are structures used in a formal domain specification. Some relevant points are the specification of a new methodology of generalization, including a new method of grouping rules; and a new and efficient method for calculating both the support and confidence of the generalized rules.
机译:挖掘广义关联规则的大多数方法都集中在使用扩展事务和简单分类法的提取模式阶段。这些作品的一个大问题与大量候选人和规则的产生有关。除此之外,使用分类法可能会产生一些局限性,例如缺乏形式主义,重用和共享问题。从这个意义上讲,本文提出了一种用于挖掘广义关联规则的新算法。这项工作的独创性在于在后期处理阶段以及所有本体级别(在正式领域规范中使用的结构)下的泛化这一事实。一些相关的要点是对新的泛化方法的规范,包括对规则进行分组的新方法;以及一种用于计算通用规则的支持度和置信度的高效新方法。

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