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Relational clustering for multi-type entity resolution

机译:用于多型实体分辨率的关系聚类

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In many applications, there are a variety of ways of referring to the same underlying entity. Given a collection of references to entities, we would like to determine the set of true underlying entities and map the references to these entities. The references may be to entities of different types and more than one type of entity may need to be resolved at the same time. We propose similarity measures for clustering references taking into account the different relations that are observed among the typed references. We pose typed entity resolution in relational data as a clustering problem and present experimental results on real data showing improvements over attribute-based models when relations are leveraged.
机译:在许多应用中,有多种方式指的是相同的底层实体。鉴于对实体的引用集合,我们想确定一组真正的基础实体并映射对这些实体的引用。参考参考可以是不同类型的实体,并且可能需要同时解决多种类型的实体。我们提出了考虑到键入的参考文献中观察到的不同关系的聚类参考的相似性措施。我们在关系数据中将类型的实体分辨率构成为聚类问题,并在关系利用时显示对基于属性的模型的实际数据的实验结果。

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