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Deep Neural Networks for Matching Online Social Networking Profiles

机译:深度神经网络,用于匹配在线社交网络配置文件

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This paper details a novel method for grouping together online social networking profiles of the same person extracted from different sources. Name ambiguity arises naturally in any culture due to the popularity of specific names which are shared by a large number of people. This is one of the main problems in people search, which is also multiplied by the number of different data sources that contain information about the same person. Grouping pages from various social networking websites in order to disambiguate between different individuals with the same name is an important task in people search. This allows building a detailed description and a consolidated online identity for each individual. Our results show that given a large enough dataset, neural networks and word embeddings provide the best method to solve this problem.
机译:本文详细介绍了一种将从不同来源提取的同一个人的在线社交网络个人资料分组在一起的新颖方法。由于许多人都共享特定名称的流行,因此在任何文化中自然都会产生名称歧义。这是人员搜索中的主要问题之一,它也乘以包含有关同一个人的信息的不同数据源的数量。对来自各种社交网站的页面进行分组以便在具有相同名称的不同个人之间进行歧义是人们搜索中的重要任务。这样可以为每个人建立详细的描述和统一的在线身份。我们的结果表明,在足够大的数据集的情况下,神经网络和词嵌入提供了解决此问题的最佳方法。

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