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Relatedness-based Multi-Entity Summarization

机译:基于相关的多实体摘要

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Representing world knowledge in a machine processable format is important as entities and their descriptions have fueled tremendous growth in knowledge-rich information processing platforms, services, and systems. Prominent applications of knowledge graphs include search engines (e.g., Google Search and Microsoft Bing), email clients (e.g., Gmail), and intelligent personal assistants (e.g., Google Now, Amazon Echo, and Apple's Siri). In this paper, we present an approach that can summarize facts about a collection of entities by analyzing their relatedness in preference to summarizing each entity in isolation. Specifically, we generate informative entity summaries by selecting: (i) inter-entity facts that are similar and (ii) intra-entity facts that are important and diverse. We employ a constrained knapsack problem solving approach to efficiently compute entity summaries. We perform both qualitative and quantitative experiments and demonstrate that our approach yields promising results compared to two other stand-alone state-of-the-art entity summarization approaches.
机译:代表机器加工格式的世界知识很重要,因为实体,他们的描述促进了丰富的信息处理平台,服务和系统中的巨大增长。知识图表的突出应用包括搜索引擎(例如,谷歌搜索和微软Bing),电子邮件客户(例如,Gmail)和智能个人助理(例如,谷歌现在,亚马逊回声和Apple的Siri)。在本文中,我们提出了一种方法,可以通过分析其相关性以孤立地总结每个实体来总结一系列关于实体集合的事实。具体而言,我们通过选择:(i)实体间事实以及(ii)重要性和多样化的内部事实的实体间事实来生成信息丰富的事实。我们采用受限制的背包问题解决方法来有效地计算实体摘要。我们既表明定性和定量实验又证明我们的方法与另外两种独立的实体摘要方法相比,我们的方法产生了有希望的结果。

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