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Context-Aware Personal Information Retrieval From Multiple Social Networks

机译:从多个社交网络检索上下文感知的个人信息

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Abstract-People use a variety of social networking services to collect and organize web information for future reuse. When such contents are actually needed as reference to reply a post in an online conversation, however, the user may not be able to retrieve them with proper cues or may even forget their existence at all. In this paper, we study this problem in the online conversation context and investigate how to automatically retrieve the most context-relevant previously-seen web information without user intervention. We propose a Context-aware Personal Information Retrieval (CPIR) algorithm, which considers both the participatory and implicit-topical properties of the context to improve the retrieval performance. Since both the context and the user's web information are usually short and ambiguous, the participatory context is utilized to formulate and expand the query. Moreover, the implicit-topical context is exploited to implicitly determine the importance of each web information of the targeting user in the given context. The experimental results using real-world dataset demonstrate that CPIR can achieve significant improvements over several baselines.
机译:抽象的人们使用各种社交网络服务来收集和组织Web信息,以备将来重用。但是,当实际上需要这些内容作为在在线对话中回复帖子的参考时,用户可能无法以适当的提示来检索它们,甚至可能根本忘记了它们的存在。在本文中,我们在在线对话上下文中研究此问题,并研究如何在无需用户干预的情况下自动检索与上下文最相关的先前看到的Web信息。我们提出了一种上下文感知的个人信息检索(CPIR)算法,该算法考虑了上下文的参与性和隐式主题属性,以提高检索性能。由于上下文和用户的Web信息通常都很短且模棱两可,因此利用参与上下文来制定和扩展查询。此外,利用隐式主题上下文来隐式确定给定上下文中目标用户的每个Web信息的重要性。使用真实数据集的实验结果表明,CPIR可以在几个基准上取得显着改善。

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