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Transformation-Based Information Extraction Using Learned Meta-rules

机译:使用学习的元规则进行基于变换的信息提取

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摘要

Information extraction (IE) is a form of shallow text understanding that locates specific pieces of data in natural language documents. Although automated IE systems began to be developed using machine learning techniques recently, the performances of those IE systems still need to be improved. This paper describes an information extraction system based on transformation-based learning, which uses learned meta-rules on patterns for slots. We plan to empirically show these techniques improve the performance of the underlying information extraction system by running experiments on a corpus of IT resume documents collected from Internet newsgroups.
机译:信息提取(IE)是一种浅层文本理解的形式,可以在自然语言文档中定位特定的数据。尽管最近开始使用机器学习技术来开发自动化IE系统,但仍需要改进那些IE系统的性能。本文介绍了一种基于基于变换的学习的信息提取系统,该系统将学习的元规则用于时隙模式。我们计划通过对从Internet新闻组收集的一系列IT简历文档进行实验,从经验上展示这些技术可提高基础信息提取系统的性能。

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