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A Pattern-Based Approach to Conceptual Clustering in FOL

机译:基于模式的概念聚类方法

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This paper presents a novel approach to Conceptual Clustering in First Order Logic (FOL) which is based on the assumption that candidate clusters can be obtained by looking for frequent association patterns in data. The resulting method extends therefore the levelwise search method for frequent pattern discovery. It is guided by a reference concept to be refined and returns a directed acyclic graph of conceptual clusters, possibly overlapping, that are subconcepts of the reference one. The FOL fragment chosen is ALC -log, a hybrid language that merges the description logic ALC and the clausal logic Datalog. It allows the method to deal with both structural and relational data in a uniform manner and describe clusters determined by non-hierarchical relations between the reference concept and other concepts also occurring in the data. Preliminary results have been obtained on Datalog data extracted from the on-line CIA World Fact Book and enriched with a ALC knowledge base.
机译:本文提出了一种基于候选集群可以通过查找数据中的频繁关联模式来获得的假设来概念群集的新方法。因此,所得到的方法延伸了频繁模式发现的速度搜索方法。它由参考概念引导,以便精制,并返回一个概念集群的定向非循环图,可能重叠,这是参考一个的子概念。选择的fol片段是ALC -Log,一种合并描述逻辑ALC和Clausal Logic Datalog的混合语言。它允许以统一的方式处理结构和关系数据,并描述由参考概念与数据中也发生的其他概念之间的非分层关系确定的集群。在从在线CIA世界事实书中提取的Datalog数据上获得了初步结果,并丰富了ALC知识库。

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