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MinlE: Minimizing Facts in Open Information Extraction

机译:MICE:最大限度地减少开放信息提取中的事实

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The goal of Open Information Extraction (OIE) is to extract surface relations and their arguments from natural-language text in an unsupervised, domain-independent manner. In this paper, we propose MinlE, an OIE system that aims to provide useful, compact extractions with high precision and recall. MinlE approaches these goals by (1) representing information about polarity, modality, attribution, and quantities with semantic annotations instead of in the actual extraction, and (2) identifying and removing parts that are considered overly specific. We conducted an experimental study with several real-world datasets and found that MinlE achieves competitive or higher precision and recall than most prior systems, while at the same time producing shorter, seman-tically enriched extractions.
机译:开放信息提取(OIE)的目标是以无监督的域名方式从自然语言文本中提取表面关系及其论点。在本文中,我们提出了一种占地面积,该系统旨在提供具有高精度和召回的有用,紧凑的提取。 MICE通过(1)表示有关具有语义注释的极性,模态,归因和数量的信息而不是实际提取中的信息,以及(2)识别和删除被认为过于特定的部件的信息。我们对几个现实世界数据集进行了一个实验研究,发现MINE比大多数现有系统实现了竞争或更高的精度和召回,同时产生较短的半明确富集的提取。

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