A Hybrid System for Chinese Grammatical Error Diagnosis and Correction

NLP-TEA@ACL Pub Date : 2018-07-01 DOI:10.18653/v1/W18-3708
Chen Li, Junpei Zhou, Zuyi Bao, Hengyou Liu, Guangwei Xu, Linlin Li
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引用次数: 12

Abstract

This paper introduces the DM_NLP team’s system for NLPTEA 2018 shared task of Chinese Grammatical Error Diagnosis (CGED), which can be used to detect and correct grammatical errors in texts written by Chinese as a Foreign Language (CFL) learners. This task aims at not only detecting four types of grammatical errors including redundant words (R), missing words (M), bad word selection (S) and disordered words (W), but also recommending corrections for errors of M and S types. We proposed a hybrid system including four models for this task with two stages: the detection stage and the correction stage. In the detection stage, we first used a BiLSTM-CRF model to tag potential errors by sequence labeling, along with some handcraft features. Then we designed three Grammatical Error Correction (GEC) models to generate corrections, which could help to tune the detection result. In the correction stage, candidates were generated by the three GEC models and then merged to output the final corrections for M and S types. Our system reached the highest precision in the correction subtask, which was the most challenging part of this shared task, and got top 3 on F1 scores for position detection of errors.
汉语语法错误诊断与纠错的混合系统
本文介绍了DM_NLP团队为NLPTEA 2018汉语语法错误诊断(CGED)共享任务开发的系统,该系统可用于检测和纠正对外汉语学习者所写的文本中的语法错误。这项任务的目的不仅是检测四种语法错误,包括冗余词(R),缺词(M),选词不良(S)和无序词(W),并建议纠正M和S类型的错误。我们提出了一个包含四个模型的混合系统,分为两个阶段:检测阶段和校正阶段。在检测阶段,我们首先使用BiLSTM-CRF模型通过序列标记来标记潜在的错误,以及一些手工特征。然后,我们设计了三个语法错误纠正(GEC)模型来生成更正,这有助于调整检测结果。在校正阶段,由三种GEC模型生成候选模型,然后合并输出M和S类型的最终校正。我们的系统在这个共享任务中最具挑战性的修正子任务中达到了最高的精度,在错误位置检测的F1得分中获得了前3名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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