Research on Chinese Text Error Correction Based on Sequence Model

Jianyong Duan, Yang Yuan, Hao Wang, Xiaopeng Wei, Zheng Tan
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引用次数: 1

Abstract

When users input text, it will inevitably produce errors, and with the rapid development and popularization of smart devices, the situation becomes more and more serious. Therefore, text correction has become one of the important research directions in the field of natural language processing. As the grammatical error correction task, in this paper, the error correction process of Chinese text is regarded as the conversion process from wrong sentence to correct sentence. In order to adapt to this task, the (sequence-to-sequence) Seq2Seq model is introduced. The wrong sentence is used as the source sentence, and the correct sentence is used as the target sentence. Supervised training is carried out in units of characters and words. It can be used for correcting errors such as word of homophone, homotype, and near-sound, greatly reducing the artificial participation and expert support of feature extraction, improve model accuracy on specific errors. In order to solve the information loss caused by the conversion of long sequence to fixed length vector, the attention mechanism is introduced into the basic model. After adding the attention mechanism, the model’s accuracy, recall rate and F1 value have been effectively improved.
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基于序列模型的中文文本纠错研究
用户在输入文本时,不可避免地会产生错误,随着智能设备的快速发展和普及,这种情况越来越严重。因此,文本纠错已成为自然语言处理领域的重要研究方向之一。作为语法纠错任务,本文将汉语文本的纠错过程视为从错误句子到正确句子的转换过程。为了适应这一任务,引入了(序列到序列)Seq2Seq模型。错误的句子作为源句,正确的句子作为目标句。监督训练以字符和单词为单位进行。它可以用于校正同音词、同型词和近音词等错误,大大减少了特征提取的人工参与和专家支持,提高了模型在特定错误上的准确性。为了解决长序列向定长向量转换所带来的信息丢失问题,在基本模型中引入了注意机制。加入注意机制后,模型的准确率、召回率和F1值得到了有效提高。
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