EMNLP2023

Joint Entity and Relation Extraction with Span Pruning and Hypergraph Neural Networks

Zhaohui Yan, Songlin Yang, Wei Liu, Kewei Tu

20 citations

Abstract

Entity and Relation Extraction (ERE) is an important task in information extraction. Recent marker-based pipeline models achieve state-ofthe-art performance, but still suffer from the error propagation issue. Also, most of current ERE models do not take into account higherorder interactions between multiple entities and relations, while higher-order modeling could be beneficial.In this work, we propose Hyper-Graph neural network for ERE (HGERE), which is built upon the PL-marker (a state-of-the-art marker-based pipleline model). To alleviate error propagation,we use a high-recall pruner mechanism to transfer the burden of entity identification and labeling from the NER module to the joint module of our model. For higher-order modeling, we build a hypergraph, where nodes are entities (provided by the span pruner) and relations thereof, and hyperedges encode interactions between two different relations or between a relation and its associated subject and object entities. We then run a hypergraph neural network for higher-order inference by applying message passing over the built hypergraph. Experiments on three widely used benchmarks (ACE2004, ACE2005 and SciERC) for ERE task show significant improvements over the previous state-of-the-art PL-marker. 1 * This work was done when Songlin was at ShanghaiTech.