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Chinese Grammatical Error Diagnosis Based on CRF and LSTM-CRF model

机译:基于CRF和LSTM-CRF模型的中国语法误差诊断

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When learning Chinese as a foreign language, the learners may have some grammatical errors due to negative migration of their native languages. However, few grammar checking applications have been developed to support the learners. The goal of this paper is to develop a tool to automatically diagnose four types of grammatical errors which are redundant words (R), missing words (M), bad word selection (S) and disordered words (W) in Chinese sentences written by those foreign learners. In this paper, a conventional linear CRF model with specific feature engineering and a LSTM-CRF model are used to solve the CGED (Chinese Grammatical Error Diagnosis) task. We make some improvement on both models and the submitted results have better performance on false positive rate and accuracy than the average of all runs from CGED2018 for all three evaluation levels.
机译:当中国人作为外语学习时,学习者可能因其母语的负面迁移而产生一些语法错误。但是,已经开发了很少的语法检查应用程序来支持学习者。本文的目标是开发一种工具,可以自动诊断四种类型的语法错误,这些错误是冗余词语(r),缺少单词(m),缺少的字词选择,错误的单词选择和汉语句子中的错误选择单词(w)外国学习者。本文使用具有特定特征工程和LSTM-CRF模型的传统线性CRF模型用于解决CIGGE(Chinese语言错误诊断)任务。我们对两种模型进行了一些改进,提交的结果具有比所有三个评估水平的CGGE2018的所有运行的平均值更好的性能。

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