从维基百科中提取时间事实和事件

Erdal Kuzey, G. Weikum
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引用次数: 52

摘要

近年来,通过从文本中自动提取关系事实,构建了大规模的知识库。不幸的是,目前大多数知识库都集中在静态事实上,而忽略了时间维度。然而,绝大多数事实是随着时间的推移而发展的,或者只在特定时期有效。因此,时间是一个重要的维度,应该包括在知识库中。在本文中,我们引入了一个完整的信息提取框架,从维基百科文章的半结构化数据和自由文本中获取时间事实和事件,以创建时间本体。首先,我们通过使时态数据表示模型能够感知事件来扩展它。其次,我们开发了一种信息提取方法,该方法从维基百科的信息框、类别、列表和文章标题中获取时间事实和事件,以构建时间知识库。第三,我们展示了系统如何使用其提取的知识来进一步扩展知识库。我们通过几个实验证明了我们提出的方法的有效性。我们从半结构化数据中提取了超过100万个时间事实,提取精度超过90%,从文本中提取精度接近70%。
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Extraction of temporal facts and events from Wikipedia
Recently, large-scale knowledge bases have been constructed by automatically extracting relational facts from text. Unfortunately, most of the current knowledge bases focus on static facts and ignore the temporal dimension. However, the vast majority of facts are evolving with time or are valid only during a particular time period. Thus, time is a significant dimension that should be included in knowledge bases. In this paper, we introduce a complete information extraction framework that harvests temporal facts and events from semi-structured data and free text of Wikipedia articles to create a temporal ontology. First, we extend a temporal data representation model by making it aware of events. Second, we develop an information extraction method which harvests temporal facts and events from Wikipedia infoboxes, categories, lists, and article titles in order to build a temporal knowledge base. Third, we show how the system can use its extracted knowledge for further growing the knowledge base. We demonstrate the effectiveness of our proposed methods through several experiments. We extracted more than one million temporal facts with precision over 90% for extraction from semi-structured data and almost 70% for extraction from text.
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