Denoising Graph Inference Network for Document-Level Relation Extraction

IF 7.7 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data Mining and Analytics Pub Date : 2023-01-26 DOI:10.26599/BDMA.2022.9020051
Hailin Wang;Ke Qin;Guiduo Duan;Guangchun Luo
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Abstract

Relation Extraction (RE) is to obtain a predefined relation type of two entities mentioned in a piece of text, e.g., a sentence-level or a document-level text. Most existing studies suffer from the noise in the text, and necessary pruning is of great importance. The conventional sentence-level RE task addresses this issue by a denoising method using the shortest dependency path to build a long-range semantic dependency between entity pairs. However, this kind of denoising method is scarce in document-level RE. In this work, we explicitly model a denoised document-level graph based on linguistic knowledge to capture various long-range semantic dependencies among entities. We first formalize a Syntactic Dependency Tree forest (SDT-forest) by introducing the syntax and discourse dependency relation. Then, the Steiner tree algorithm extracts a mention-level denoised graph, Steiner Graph (SG), removing linguistically irrelevant words from the SDT-forest. We then devise a slide residual attention to highlight word-level evidence on text and SG. Finally, the classification is established on the SG to infer the relations of entity pairs. We conduct extensive experiments on three public datasets. The results evidence that our method is beneficial to establish long-range semantic dependency and can improve the classification performance with longer texts.
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用于文档级关系提取的去噪图推理网络
关系提取(RE)是获取一段文本中提到的两个实体的预定义关系类型,例如句子级别或文档级别的文本。现有的大多数研究都受到文本噪音的影响,必要的修剪非常重要。传统的句子级RE任务通过使用最短依赖路径在实体对之间建立长程语义依赖的去噪方法来解决这个问题。然而,这种去噪方法在文档级RE中很少。在这项工作中,我们基于语言知识显式地建模去噪的文档级图,以捕捉实体之间的各种长程语义依赖关系。通过引入句法和语篇依赖关系,我们首先形式化了一个句法依赖树森林(SDT森林)。然后,Steiner树算法提取一个提及级去噪图,即Steiner图(SG),从SDT森林中去除与语言无关的单词。然后,我们设计了一个幻灯片残差注意力来突出文本和SG上的单词级证据。最后,在SG上建立分类来推断实体对的关系。我们在三个公共数据集上进行了广泛的实验。结果表明,我们的方法有利于建立长程语义依赖关系,并可以提高较长文本的分类性能。
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来源期刊
Big Data Mining and Analytics
Big Data Mining and Analytics Computer Science-Computer Science Applications
CiteScore
20.90
自引率
2.20%
发文量
84
期刊介绍: Big Data Mining and Analytics, a publication by Tsinghua University Press, presents groundbreaking research in the field of big data research and its applications. This comprehensive book delves into the exploration and analysis of vast amounts of data from diverse sources to uncover hidden patterns, correlations, insights, and knowledge. Featuring the latest developments, research issues, and solutions, this book offers valuable insights into the world of big data. It provides a deep understanding of data mining techniques, data analytics, and their practical applications. Big Data Mining and Analytics has gained significant recognition and is indexed and abstracted in esteemed platforms such as ESCI, EI, Scopus, DBLP Computer Science, Google Scholar, INSPEC, CSCD, DOAJ, CNKI, and more. With its wealth of information and its ability to transform the way we perceive and utilize data, this book is a must-read for researchers, professionals, and anyone interested in the field of big data analytics.
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