School of Foreign Languages, Hubei University of Arts and Science, Xiangyang 441000, Hubei, China.
Comput Intell Neurosci. 2022 May 28;2022:3141451. doi: 10.1155/2022/3141451. eCollection 2022.
In recent years, with the rapid development of science and technology, traditional teaching methods and concepts have been frequently impacted. Artificial neural network shows excellent intelligence because of its powerful nonlinear processing ability and efficient associative function. It is increasingly becoming an emerging object in the field of artificial intelligence. At the same time, in the field of education and teaching, the integration of English teaching and multimodality not only condenses the characteristics of the times but also expands new teaching models, bringing opportunities for the emergence of new teaching models. Based on this, this study proposes an interactive method for multimodal English teaching based on artificial neural networks. It aims to study how to use the autonomous learning of artificial neural networks to accelerate the fusion of different modalities and at the same time make suggestions for different teaching interaction modes. This paper firstly analyzes the interaction of English teaching under the traditional mode. It then proposes a multimodal fusion interaction method based on artificial neural networks. It finally explores the feasibility of the new interaction theory by setting up an experimental group and a control group. Through the analysis of the experimental data, the final data results show that the multimodal fusion interaction based on artificial neural network has a very significant effect, and the students' interest in the English classroom is as high as 81.9%. This fully demonstrates the great value of the new fusion method, and it has certain enlightening significance for the establishment of English teaching modes and curriculum reform.
近年来,随着科学技术的飞速发展,传统的教学方法和观念受到了频繁的冲击。人工神经网络由于其强大的非线性处理能力和高效的联想功能,表现出优异的智能,日益成为人工智能领域的新兴对象。同时,在教育教学领域,英语教学与多模态的融合不仅凝聚了时代的特点,而且拓展了新的教学模式,为新的教学模式的出现带来了机遇。在此基础上,本研究提出了一种基于人工神经网络的多模态英语教学交互方法。旨在研究如何利用人工神经网络的自主学习来加速不同模态的融合,同时为不同的教学交互模式提供建议。本文首先分析了传统模式下的英语教学交互,然后提出了一种基于人工神经网络的多模态融合交互方法,最后通过设立实验组和对照组来探讨新的交互理论的可行性。通过对实验数据的分析,最终数据结果表明,基于人工神经网络的多模态融合交互具有非常显著的效果,学生对英语课堂的兴趣高达 81.9%。这充分证明了新融合方法的巨大价值,对英语教学模式的建立和课程改革具有一定的启示意义。