Author:
Li Ran,La kaijun,Lei Jingsheng,Huang Liya,Ouyang Jing,Shu Yu,Yang Shengying
Abstract
AbstractNamed entity recognition and relation extraction are two important fundamental tasks in natural language processing. The joint entity-relationship extraction model based on parameter sharing can effectively reduce the impact of cascading errors on model performance by performing joint learning of entities and relationships in a single model, but it still cannot essentially get rid of the influence of pipeline models and suffers from entity information redundancy and inability to recognize overlapping entities. To this end, we propose a joint extraction model based on the decomposition strategy of pointer mechanism is proposed. The joint extraction task is divided into two parts. First, identify the head entity, utilizing the positive gain effect of the head entity on tail entity identification.Then, utilize a hierarchical model to improve the accuracy of the tail entity and relationship identification. Meanwhile, we introduce a pointer model to obtain the joint features of entity boundaries and relationship types to achieve boundary-aware classification. The experimental results show that the model achieves better results on both NYT and WebNLG datasets.
Funder
National Natural Science Foundation of China
Guizhou Power Grid Co Ltd
Publisher
Springer Science and Business Media LLC
Reference27 articles.
1. Zheng, S. et al. Joint entity and relation extraction based on a hybrid neural network. Neurocomputing 257, 59–66 (2017).
2. Adel, H. & Schütze, H. Global normalization of convolutional neural networks for joint entity and relation classification. Preprint at arXiv:1707.07719 (2017).
3. Gao, C., Zhang, X. & Liu, H. et al. A joint extraction model of entities and relations based on relation decomposition. Int. J. Mach. Learn. & Cyber. 13, 1833–1845 (2022).
4. Zhang, J., Jiang, X., Sun, Y. & Luo, H. RS-TTS: A novel joint entity and relation extraction model. In Proceedings of the 26th International Conference on Computer Supported Cooperative Work in Design (CSCWD), 71–76 (2023).
5. Dai, D. et al. Joint extraction of entities and overlapping relations using position-attentive sequence labeling. Proc. AAAI Conf. Artif. Intell. 33, 6300–6308 (2019).