有效的光谱邻域块实体分辨率

Liangcai Shu, Aiyou Chen, Ming Xiong, W. Meng
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引用次数: 42

摘要

在许多电信和web应用程序中,需要识别相同源中的数据对象还是不同源中的数据对象在现实世界中表示相同的实体。当缺乏跨多个数据源的唯一标识符来表示真实世界的实体时,多个服务中的订阅者、供应链管理中的客户以及社交网络中的用户都会出现这个问题。实体解析是识别和发现数据集中引用现实世界中相同实体的对象。我们研究了需要高效和可扩展解决方案的大型数据集的实体解析问题。本文提出了一种新的无监督阻塞算法——谱邻域(SPectrAl Neighborhood, SPAN),该算法基于谱聚类为记录构建了一棵快速的二分树,使得树中的邻域记录能够准确地识别出真实的实体。我们的方法有两个主要的新颖方面:1)我们开发了一种快速的算法,该算法可以在不显式计算两两相似度的情况下执行光谱聚类,这大大提高了标准光谱聚类算法的可扩展性;2)在双分区过程中,我们使用了由Newman-Girvan模性指定的停止准则。我们对合成数据和实际数据的实验结果表明,SPAN具有鲁棒性,在准确性方面优于其他阻塞算法,同时在处理大型数据集方面具有效率和可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient SPectrAl Neighborhood blocking for entity resolution
In many telecom and web applications, there is a need to identify whether data objects in the same source or different sources represent the same entity in the real-world. This problem arises for subscribers in multiple services, customers in supply chain management, and users in social networks when there lacks a unique identifier across multiple data sources to represent a real-world entity. Entity resolution is to identify and discover objects in the data sets that refer to the same entity in the real world. We investigate the entity resolution problem for large data sets where efficient and scalable solutions are needed. We propose a novel unsupervised blocking algorithm, namely SPectrAl Neighborhood (SPAN), which constructs a fast bipartition tree for the records based on spectral clustering such that real entities can be identified accurately by neighborhood records in the tree. There are two major novel aspects in our approach: 1)We develop a fast algorithm that performs spectral clustering without computing pairwise similarities explicitly, which dramatically improves the scalability of the standard spectral clustering algorithm; 2) We utilize a stopping criterion specified by Newman-Girvan modularity in the bipartition process. Our experimental results with both synthetic and real-world data demonstrate that SPAN is robust and outperforms other blocking algorithms in terms of accuracy while it is efficient and scalable to deal with large data sets.
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