Enhancing collective entity resolution utilizing Quasi-Clique similarity measure

Zhang Yongxin, Li Qingzhong, Bian Ji
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Abstract

Entity resolution(ER) is the problem of identifying duplicate references that refer to the same real world entity. It is a critical component of data integration and data cleaning. Attribute-based entity resolution is the traditional approach where similarity is computed for each pair of references based on their attributes. More recently, context-base entity resolution has been proposed which considers the attributes of the related references. In this paper, we present a collective entity resolution approach which using Quasi-Clique similarity to improve the accuracy. It complements the traditional methodology by reducing the number of false positive. An experimental evaluation on several datasets shows high recall and precision rates, which validate the method's efficiency.
利用准团相似性测度增强集体实体分辨力
实体解析(ER)是识别引用同一现实世界实体的重复引用的问题。它是数据集成和数据清理的关键组件。基于属性的实体解析是传统的方法,其中根据每对引用的属性计算相似性。最近,基于上下文的实体解析被提出,它考虑相关引用的属性。本文提出了一种利用拟团相似度提高集体实体解析精度的方法。它通过减少假阳性的数量来补充传统的方法。实验结果表明,该方法具有较高的查全率和查准率,验证了该方法的有效性。
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