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Name disambiguation from link data in a collaboration graph

机译:从协作图中的链接数据中消除歧义

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摘要

The entity disambiguation task partitions the records belonging to multiple persons with the objective that each decomposed partition is composed of records of a unique person. Existing solutions to this task use either biographical attributes, or auxiliary features that are collected from external sources, such as Wikipedia. However, for many scenarios, such auxiliary features are not available, or they are costly to obtain. Besides, the attempt of collecting biographical or external data sustains the risk of privacy violation. In this work, we propose a method for solving entity disambiguation task from link information obtained from a collaboration network. Our method is non-intrusive of privacy as it uses only the time-stamped graph topology of an anonymized network. Experimental results on two real-life academic collaboration networks show that the proposed method has satisfactory performance.
机译:实体消歧任务将属于多个人的记录分区,目的是每个分解的分区都由一个唯一的人的记录组成。这项任务的现有解决方案使用传记属性或从外部资源(如Wikipedia)收集的辅助功能。但是,在许多情况下,此类辅助功能不可用,或者获得这些辅助功能的成本很高。此外,尝试收集个人资料或外部数据还存在侵犯隐私的风险。在这项工作中,我们提出了一种根据从协作网络获得的链接信息解决实体消歧任务的方法。我们的方法不侵犯隐私,因为它仅使用匿名网络的带时间戳的图拓扑。在两个现实生活中的学术协作网络上的实验结果表明,该方法具有令人满意的性能。

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