基于人工智能算法的自然语言处理技术英语教学系统

Jingxiu Shi, Li Ni, Zhihao Su
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引用次数: 1

摘要

英语口语是学生英语能力中非常重要的一项技能。同时,英语口语学习需要一个苛刻的环境。因为英语教师教学任务繁重,时间有限。本研究开发的基于人工智能算法的自然语言处理技术的英语教学系统,可以很好地解决这一问题。系统采用基于人工智能算法的最先进的自然语言处理技术,及时、快速、有针对性地纠正和反馈学生口语问题,有利于提高学生口语学习效率和兴趣。该系统基于Transformer的双向编码表示,提出了一种改进的双向编码器表示,简称BERT。该算法对英语口语识别的准确率明显高于其他经典算法。该系统已在部分大学进行了测试和评价,学生的学习效率和满意度明显高于其他英语口语学习系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
English-Speaking Teaching System with Natural Language Processing Technology Based on Artificial Intelligence Algorithms
English speaking is a very important skill of English ability for students. At the same time, English speaking learning needs a demanding environment. Because English teachers have heavy teaching tasks and limited time. This research developed an English-speaking teaching system with natural language processing technology based on artificial intelligence algorithms, which can solve this problem very well. The system engages the most advanced natural language processing technology based on artificial intelligence algorithms to correct and feedback students' oral problems in a timely, fast, and targeted manner, which is beneficial to improve students' speaking learning efficiency and interest. This system proposes an improved Bidirectional Encoder Representations from Transformers model, which is simply called BERT and based on Transformer's bidirectional encoding representation. The accuracy of this algorithm for spoken English recognition is significantly higher than other classical algorithms. This system has been tested and evaluated in some universities, and the learning efficiency and satisfaction of students is significantly higher than other oral English learning systems.
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