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Knowledge Base Population: Successful Approaches and Challenges

机译:知识库人口:成功的方法和挑战

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In this paper we give an overview of the Knowledge Base Population (KBP) track at the 2010 Text Analysis Conference. The main goal of KBP is to promote research in discovering facts about entities and augmenting a knowledge base (KB) with these facts. This is done through two tasks, Entity Linking - linking names in context to entities in the KB -and Slot Filling - adding information about an entity to the KB. A large source collection of newswire and web documents is provided from which systems are to discover information. Attributes ("slots") derived from Wikipedia infoboxes are used to create the reference KB. In this paper we provide an overview of the techniques which can serve as a basis for a good KBP system, lay out the remaining challenges by comparison with traditional Information Extraction (IE) and Question Answering (QA) tasks, and provide some suggestions to address these challenges.
机译:在本文中,我们在2010年文本分析会议上概述了知识库人口(KBP)的轨迹。 KBP的主要目标是促进发现有关实体的事实的研究,并利用这些事实扩展知识库(KB)。这是通过两项任务完成的:实体链接-将上下文中的名称链接到KB中的实体-和插槽填充-将有关实体的信息添加到KB。提供了大量新闻专线和Web文档的来源,从中系统可以发现信息。从Wikipedia信息框派生的属性(“插槽”)用于创建参考KB。在本文中,我们概述了可以用作良好KBP系统基础的技术,并与传统的信息提取(IE)和问题回答(QA)任务进行了比较,列出了剩余的挑战,并提出了一些解决方案这些挑战。

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