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Entity Resolution Using Social Graphs for Business Applications

机译:使用业务应用程序的社交图来解决实体分辨率

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Social network such as Linked In maintains profiles for its members in a semi-structured format. A lot of business applications like ad targeting and content recommendations rely on canonicalization of data elements like companies, titles and schools for enabling fine grained advertising or recommending candidates for job postings. In this paper we explore the issues around resolving company names for hundreds of millions of member positions to known company entities using the social graph. We proposed a machine learning approach leveraging three dimensional feature sets including the social graph, social behavior and various content and demographic features. The experiments showed that our approach achieved high precision at a reasonable coverage and is significantly superior to a baseline content based approach.
机译:社交网络,如链接中以半结构化格式为其成员维护配置文件。许多商业应用程序,如广告目标和内容建议依赖于公司,标题和学校等数据元素的规范化,以实现精细粒度的广告或建议招聘候选人。在本文中,我们探讨了使用社会图表向已知公司实体的数亿个成员职位解决公司名称的问题。我们提出了一种机器学习方法,利用包括社会图,社会行为和各种内容和人口统计特征的三维特征集。实验表明,我们的方法在合理的覆盖范围内实现了高精度,并且显着优于基于基于基于基于基于基于基于基于基于基于的方法。

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