Natural Language Enhancement for English Teaching Using Character-Level Recurrent Neural Network with Back Propagation Neural Network based Classification by Deep Learning Architectures

Zhiling Yang
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引用次数: 1

Abstract

Natural Language Processing (NLP) is an efficient method for enhancing educational outcomes. In educational settings, implementing NLP entails starting the learning process through natural acquisition. English teaching and learning have received increased attention from the relevant education departments as an integral aspect of the new curriculum reform. The environment of English teaching and learning is undergoing extraordinary changes as a result of the constant improvement and extension of teaching level and scale, as well as the growth of Internet information technology. As a result, the current research aims to look into techniques for efficiently using AI (artificial intelligence) apps to teach and learn English from the perspective of university students. This research can measure the levels as well as effectiveness of the employment of AI applications for teaching English based on deep learning techniques. There, the NLP based language enhancement has been carried out using Character-level recurrent neural network with back Propagation neural network (Cha_RNN_BPNN) based classification. With the help of this DL (deep learning) technique, it is possible to use AI methods to assist teachers in analysing and diagnosing students' English learning behaviour, replacing teachers in part to answer students' questions in a timely manner, and automatically grading assignments during the English teaching process. Experimental analysis shows Word Perplexity, Flesch-Kincaid (F-K) Grade Level for Readability, Cosine Similarity for Semantic Coherence, gradient change of NN, validation accuracy, and training accuracy of the proposed technique.
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基于深度学习架构的反向传播神经网络分类的字符级递归神经网络在英语教学中的自然语言增强
自然语言处理(NLP)是提高教育成果的有效方法。在教育环境中,实施NLP需要通过自然习得开始学习过程。英语教学作为新课程改革的重要组成部分,越来越受到教育相关部门的重视。随着教学水平和教学规模的不断提高和扩大,以及互联网信息技术的发展,英语教学环境正在发生着非同寻常的变化。因此,目前的研究旨在从大学生的角度研究如何有效地使用人工智能应用程序来教授和学习英语。这项研究可以衡量基于深度学习技术的人工智能应用在英语教学中的水平和有效性。其中,基于NLP的语言增强使用字符级递归神经网络与基于反向传播神经网络(Cha_RNN_BPNN)的分类进行。在这种深度学习技术的帮助下,可以使用人工智能方法帮助教师分析和诊断学生的英语学习行为,代替教师及时回答学生的问题,并在英语教学过程中自动评分作业。实验分析表明,该方法具有Word Perplexity、Flesch-Kincaid (F-K) Grade Level可读性、余弦相似度语义一致性、神经网络梯度变化、验证精度和训练精度。
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