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Forest-based entity-relation joint extraction model
Xuanli WANG, Xiaolong JIN, Zhongni HOU, Huaming LIAO, Jin ZHANG
Journal of Computer Applications    2023, 43 (9): 2700-2706.   DOI: 10.11772/j.issn.1001-9081.2022091419
Abstract269)   HTML15)    PDF (1117KB)(152)       Save

Nested entities pose a challenge to the task of entity-relation joint extraction. The existing joint extraction models have the problems of generating a large number of negative examples and high complexity when dealing with nested entities. In addition, the interference of nested entities on triplet prediction is not considered by these models. To solve these problems, a forest-based entity-relation joint extraction method was proposed, named EF2LTF (Entity Forest to Layering Triple Forest). In EF2LTF, a two-stage joint training framework was adopted. Firstly, through the generation of an entity forest, different entities within specific nested entities were identified flexibly. Then, the identified nested entities and their hierarchical structures were combined to generate a hierarchical triplet forest. Experimental results on four benchmark datasets show that EF2LTF outperforms methods such as joint entity and relation extraction with Set Prediction Network (SPN) model, joint extraction model for entities and relations based on Span — SpERT (Span-based Entity and Relation Transformer) and Dynamic Graph Information Extraction ++ (DyGIE++)on F1 score. It is verified that the proposed method not only enhances the recognition ability of nested entities, but also enhances the ability to distinguish nested entities when constructing triples, thereby improving the joint extraction performance of entities and relations.

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