Inter-personal Relation Extraction Model based on Dependency Parsing and Bidirectional Gating Recurrent Unit

Baohua Jin, Songtao Shang, Miaomiao Qin, Zuhe Li
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Abstract

Relationship extraction is a fundamental component of various information extraction systems. Traditional relationship extraction methods are mainly rule-based methods and machine learning methods. Rule-based methods require induction and analysis of the corpus, followed by extraction of relationship extraction rules and finally pattern matching. The machine learning approach requires a large amount of manually annotated train data and manual extraction of features. However, these methods require a lot of statics and higher time costs. Considering these issues in the traditional relationship extraction methods and the linguistic characteristics of Chinese text, this paper proposes a new deep neural network structure. Firstly, the dependency relationships between sentence components are analyzed by using dependency parsing, which reveals the syntactic structure of the sentence and enhance the potential semantic information. Secondly, the important semantic information in the sentences is captured by using the sentence-level attention mechanism. Finally, the Bidirectional Gating Recurrent Unit model is used to simultaneously capture the contextual information of the text, and to improve the performance of relation extraction. The experimental results show that the model proposed in this paper is more effective than existing methods.
基于依赖解析和双向门控循环单元的人际关系抽取模型
关系抽取是各种信息抽取系统的基本组成部分。传统的关系提取方法主要是基于规则的方法和机器学习方法。基于规则的方法需要对语料库进行归纳和分析,然后提取关系提取规则,最后进行模式匹配。机器学习方法需要大量手动标注的训练数据和手动提取特征。然而,这些方法需要大量的静态数据和较高的时间成本。针对传统关系抽取方法存在的问题,结合中文文本的语言特点,提出了一种新的深度神经网络结构。首先,利用依存句法分析方法分析句子成分之间的依存关系,揭示句子的句法结构,增强句子潜在的语义信息。其次,利用句子级注意机制捕获句子中的重要语义信息。最后,利用双向门控循环单元模型同时捕获文本的上下文信息,提高了关系提取的性能。实验结果表明,本文提出的模型比现有的方法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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