基于网络技术支持的农村英语助学教学模式改革研究

IF 3.1 Q1 Mathematics
Zinan Su
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引用次数: 0

摘要

摘要在网络技术发展的背景下,本文旨在促进农村英语教学,构建英语识别技术与农村教学相结合的英语教学模式。通过对不同语音识别技术的分析,探讨了语音识别的主要过程。利用深度学习网络,建立了英语语音识别模型。结合网络数据中的英语声学特征,对英语语音的流畅性进行评价。对网络中的英语序列进行数据嵌入,结合英语数据中的序列概率,判断英语语音是否正确。结果显示,基于深度学习的英语识别模型的Eval值为5.49%,而test值为5.89%。随着英语数据集的增加,本文提出的英语识别技术的准确率保持在0.6以上,当数据集为500时,语音识别准确率为0.8。语音识别技术与英语教学相结合的教学模式在一定程度上提高了学生的英语水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the Reform of the Teaching Mode of Rural English Education Assistance Based on the Technical Support of Network Technology
Abstract Under the background of the development of network technology, this paper aims to promote rural English teaching and constructs an English teaching model that combines English recognition technology and rural teaching. The main process of speech recognition is examined by analyzing different speech recognition technologies. Using a deep learning network, an English speech recognition model has been established. Combined with the English acoustic features in the network data, fluency of English speech is evaluated. Data embedding is performed on the English sequences in the network, combined with the sequence probability in the English data, so as to determine whether the English speech is correct or not. The Eval value for the English recognition model based on deep learning is 5.49%, while the test value is 5.89%, as per the results. As the English dataset increases, so does the English recognition technique proposed in this paper, and the accuracy remains above 0.6, and when the dataset is 500, the speech recognition accuracy is 0.8. The teaching model that combines speech recognition techniques with English teaching improves students’ English to a certain extent.
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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