首页|Denoising Graph Inference Network for Document-Level Relation Extraction

Denoising Graph Inference Network for Document-Level Relation Extraction

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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.

Relation Eextraction(RE)document-leveldenoisinglinguistic knowledgeattention mechanism

Hailin Wang、Ke Qin、Guiduo Duan、Guangchun Luo

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School of Computer Science and Engineering,University of Electronic Science and Technology of China,Chengdu 611731,China

School of Computing and Artificial Intelligence,Southwestern University of Finance and Economics,Chengdu 611130,China

School of Computer Science and Engineering,University of Electronic Science and Technology of China,Chengdu 611731,China.

National Natural Science Foundation of China

U19A2059 &62176046

2023

大数据挖掘与分析(英文版)

大数据挖掘与分析(英文版)

CSCDEI
ISSN:
年,卷(期):2023.6(2)
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