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College English Flipped Classroom Teaching Model Based on Big Data and Deep Neural Networks

机译:基于大数据和深神经网络的大学英语翻转课堂教学模式

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With the rapid development of information technology, flipped classroom as a new type of mixed teaching mode relying on computer technology has changed the traditional teaching mode and formed a teaching process of “learning first and teaching later,” and it has been used in many fields of teaching. Flipped classroom reverses the sequence of traditional teaching knowledge transfer and knowledge internalization and improves students’ autonomy. However, it is still in the exploratory stage of the specific impact of the flipped classroom teaching model on college students’ English autonomous learning ability. Therefore, this article proposes a novel college English flipped classroom teaching model based on big data and deep neural networks. The study has selected a total of 230 students in two classes of the second-year English major of a university as the research objects. Data are utilized to investigate the changes of the two groups of students’ English autonomous learning ability and English academic performance, to explore the specific changes of college students’ English autonomous learning ability and its influencing factors through interviews, and to predict and effectively analyze the weight of influencing factors through the deep neural network. This research enriches the theoretical research results of college students’ English autonomous learning ability under the flipped classroom teaching model, provides reference for the cultivation of college students’ English autonomous learning ability, and has certain reference significance for the optimization of the flipped classroom teaching model. The proposed research will support researchers and practitioners at college and university level.
机译:随着信息技术的飞速发展,翻转课堂作为一种新型的混合教学模式依托计算机技术改变了传统的教学模式,形成了一个教学过程中“学习第一,后来教”,并已在许多领域被使用教学。翻转课堂扭转传统教学知识转移和知识内化的顺序和提高学生的自主性。然而,它仍然是在的翻转课堂教学模式对大学生英语自主学习能力的具体影响的探索阶段。因此,本文提出了一种新的大学英语翻转基于大数据和深层神经网络课堂教学模式。该研究共抽取了230名学生在两个班二年级的英语专业的一所大学作为研究对象的。数据被用来调查两组学生的英语自主学习能力和英语学习成绩,探讨大学生的具体变化通过访谈英语自主学习能力及其影响因素的变化,并预测和有效地分析重量通过深神经网络的影响因素。本研究丰富了大学生的理论研究成果的翻转课堂教学模式下的英语自主学习能力,为大学生的培养参考英语自主学习能力,并具有翻转课堂教学模式的优化具有一定的参考意义。拟议的研究将支持研究人员和从业人员的学院和大学的水平。

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