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- Title
Coreference Resolution Based on High-Dimensional Multi-Scale Information.
- Authors
Wang, Yu; Ding, Zenghui; Wang, Tao; Xu, Shu; Yang, Xianjun; Sun, Yining
- Abstract
Coreference resolution is a key task in Natural Language Processing. It is difficult to evaluate the similarity of long-span texts, which makes text-level encoding somewhat challenging. This paper first compares the impact of commonly used methods to improve the global information collection ability of the model on the BERT encoding performance. Based on this, a multi-scale context information module is designed to improve the applicability of the BERT encoding model under different text spans. In addition, improving linear separability through dimension expansion. Finally, cross-entropy loss is used as the loss function. After adding BERT and span BERT to the module designed in this article, F1 increased by 0.5% and 0.2%, respectively.
- Subjects
NATURAL language processing; TEXT recognition
- Publication
Entropy, 2024, Vol 26, Issue 6, p529
- ISSN
1099-4300
- Publication type
Article
- DOI
10.3390/e26060529