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Comparing Rule Evaluation Metrics for the Evolutionary Discovery of Multi-relational Association Rules in the Semantic Web

机译:语义网中多关系关联规则的进化发现的规则评估指标比较

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We carry out a comparison of popular asymmetric metrics, originally proposed for scoring association rules, as building blocks for a fitness function for evolutionary inductive programming. In particular, we use them to score candidate multi-relational association rules in an evolutionary approach to the enrichment of populated knowledge bases in the context of the Semantic Web. The evolutionary algorithm searches for hidden knowledge patterns, in the form of SWRL rules, in assertional data, while exploiting the deductive capabilities of ontologies. Our methodology is to compare the number of generated rules and total predictions when the metrics are used to compute the fitness function of the evolutionary algorithm. This comparison, which has been carried out on three publicly available ontologies, is a crucial step towards the selection of suitable metrics to score multi-relational association rules that are generated from ontologies.
机译:我们对流行的非对称度量进行了比较,该度量最初是为关联规则评分而提出的,作为进化归纳编程的适应度函数的构建块。特别是,我们使用它们为语义网络上下文中的丰富知识库的进化方法对候选的多关系关联规则进行评分。进化算法在利用本体的演绎能力的同时,在断言数据中以SWRL规则的形式搜索隐藏的知识模式。我们的方法是在使用度量标准来计算进化算法的适应度函数时,比较生成规则和总数预测的数量。已经在三种公开可用的本体上进行了比较,这是朝着选择合适的指标以对从本体生成的多关系关联规则评分的关键步骤。

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