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SDCL: Self-Distillation Contrastive Learning for Chinese Spell Checking (2210.17168v4)
Published 31 Oct 2022 in cs.CL and cs.AI
Abstract: Due to the ambiguity of homophones, Chinese Spell Checking (CSC) has widespread applications. Existing systems typically utilize BERT for text encoding. However, CSC requires the model to account for both phonetic and graphemic information. To adapt BERT to the CSC task, we propose a token-level self-distillation contrastive learning method. We employ BERT to encode both the corrupted and corresponding correct sentence. Then, we use contrastive learning loss to regularize corrupted tokens' hidden states to be closer to counterparts in the correct sentence. On three CSC datasets, we confirmed our method provides a significant improvement above baselines.
- Xiaotian Zhang (35 papers)
- Hang Yan (86 papers)
- Yu Sun (226 papers)
- Xipeng Qiu (257 papers)