基于最大信息熵模型的大学课程实践教学与知识化

IF 3.1 Q1 Mathematics
Xinyan Huang
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引用次数: 0

摘要

传统教学已成为过去式,技术与课堂的融合给教育带来了重大变革,信息熵在教学中的作用逐渐显现。本文将大学课程教学过程中的行为时间占比看成概率分布事件结合拉格朗日乘法求解实践教学行为分布中的最大熵值。利用交互行为系数和交互行为熵可以计算出课堂教学行为的实践深度值。将信息熵应用于大学课程实践教学分析,从不同侧面验证大学课程的实践效果,并根据学生学习行为现状进行智能课程建设。结果显示,3班实践分析能力测评平均分为4.021分,说明该班学生实践分析能力达标,在后期的实践教学中应主要培养学生的实践执行力。67.1%的学生认为根据智慧课程模式,智慧课堂比传统课堂提高了成绩。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practical Teaching and Intellectualization of University Courses Based on the Maximum Information Entropy Model
Traditional teaching has become a thing of the past, the integration of technology and the classroom has brought about significant changes in education, and the role of information entropy in teaching has gradually manifested itself. In this paper, the behavioral time occupancy of the teaching process of university courses is viewed as a probability distribution event combined with the Lagrange multiplier method to solve the maximum entropy value in the distribution of practical teaching behavior. The practice depth value of classroom behavior can be calculated using the interaction behavior coefficient and interaction behavior entropy. Apply the information entropy to the practical teaching analysis of university courses, verify the practical effect of university courses from different sides, and carry out intelligent course construction according to the current situation of students’ learning behavior. The results show that the average score of class 3 in the practical analysis ability assessment is 4.021, which indicates that the practical analysis ability of students in the class meets the standard, and the students’ practical execution should be mainly cultivated in the later practical teaching. 67.1% of students believe that the intelligent classroom has improved their performance over the traditional classroom according to the intelligent course model.
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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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