基于全局结构约束的开放信息提取

Qi Zhu, Xiang Ren, Jingbo Shang, Yu Zhang, Frank F. Xu, Jiawei Han
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引用次数: 6

摘要

从文本中提取实体及其关系是理解海量文本语料库的重要任务。开放信息抽取(IE)系统从句子中挖掘关系元组(即实体参数和描述其关系的谓词字符串)。然而,目前的开放IE系统忽略了一个事实,即大型语料库中的全球统计数据可以被集体利用来识别高质量的句子级提取。在本文中,我们提出了一种新的开放式IE系统,称为ReMine,它将本地上下文信号和全局结构信号集成在一个统一的框架中,并具有远程监督。该系统利用外部知识库中的事实作为监督,可以有效地应用于不同的领域;并且可以基于语料库级统计有效地对句子级元组提取进行评分。具体来说,我们设计了一个联合优化问题来统一(1)基于局部上下文的单个句子中实体/关系短语的分割;(2)用基于翻译的目标衡量句子级提取的质量。与其他开放IE系统相比,在不同领域的真实语料库上的实验证明了ReMine的有效性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Open Information Extraction with Global Structure Constraints
Extracting entities and their relations from text is an important task for understanding massive text corpora. Open information extraction (IE) systems mine relation tuples (i.e., entity arguments and a predicate string to describe their relation) from sentences. However, current open IE systems ignore the fact that global statistics in a large corpus can be collectively leveraged to identify high-quality sentence-level extractions. In this paper, we propose a novel open IE system, called ReMine, which integrates local context signal and global structural signal in a unified framework with distant supervision. The new system can be efficiently applied to different domains as it uses facts from external knowledge bases as supervision; and can effectively score sentence-level tuple extractions based on corpus-level statistics. Specifically, we design a joint optimization problem to unify (1) segmenting entity/relation phrases in individual sentences based on local context; and (2) measuring the quality of sentence-level extractions with a translating-based objective. Experiments on real-world corpora from different domains demonstrate the effectiveness and robustness of ReMine when compared to other open IE systems.
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