TMU-NLP System Using BERT-based Pre-trained Model to the NLP-TEA CGED Shared Task 2020

AACL (NLP-TEA) 2020  ·  Hongfei Wang, Mamoru Komachi ·

In this paper, we introduce our system for NLPTEA 2020 shared task of Chinese Grammatical Error Diagnosis (CGED). In recent years, pre-trained models have been extensively studied, and several downstream tasks have benefited from their utilization. In this study, we treat the grammar error diagnosis (GED) task as a grammatical error correction (GEC) problem and propose a method that incorporates a pre-trained model into an encoder-decoder model to solve this problem.

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