Document Spanners for Extracting Incomplete Information: Expressiveness and Complexity

Francisco Maturana, Cristian Riveros, D. Vrgoc
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引用次数: 37

Abstract

Rule-based information extraction has lately received a fair amount of attention from the database community, with several languages appearing in the last few years. Although information extraction systems are intended to deal with semistructured data, all language proposals introduced so far are designed to output relations, thus making them incapable of handling incomplete information. To remedy the situation, we propose to extend information extraction languages with the ability to use mappings, thus allowing us to work with documents which have missing or optional parts. Using this approach, we simplify the semantics of regex formulas and extraction rules, two previously defined methods for extracting information. We extend them with the ability to handle incomplete data, and study how they compare in terms of expressive power. We also study computational properties of these languages, focusing on the query enumeration problem, as well as satisfiability and containment.
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用于提取不完整信息的文档生成器:表达性和复杂性
基于规则的信息提取最近受到了数据库社区的大量关注,在过去几年中出现了几种语言。虽然信息提取系统的目的是处理半结构化数据,但迄今为止引入的所有语言建议都被设计为输出关系,从而使它们无法处理不完整的信息。为了纠正这种情况,我们建议扩展信息提取语言,使其具有使用映射的能力,从而允许我们处理缺少部分或可选部分的文档。使用这种方法,我们简化了正则表达式公式和提取规则的语义,这是之前定义的两种提取信息的方法。我们将它们扩展为处理不完整数据的能力,并研究它们在表达能力方面的比较。我们还研究了这些语言的计算特性,重点是查询枚举问题,以及可满足性和包容性。
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