Undergraduate Academic Affairs Office, Shandong University of Arts, Jinan, Shandong 250000, China.
Cavite State University, Don Severino de Las Alas Campus, Indang, Cavite 4100, Philippines.
Comput Intell Neurosci. 2021 Aug 12;2021:8785127. doi: 10.1155/2021/8785127. eCollection 2021.
With the popularization and application of online education in the world, how to evaluate and analyze the classroom teaching effect through scientific methods has become one of the important teaching tasks in colleges. Based on this, this paper studies the application of the GA-BP neural network algorithm. Firstly, it gives a brief overview of the current situation of online education and GA-BP neural network algorithm. Secondly, through the investigation of the online education system in many aspects, it evaluates students' online education classroom teaching quality from five aspects, and this paper proposes a more scientific online education classroom teaching quality evaluation optimization model and finally verifies the reliability of the online education teaching evaluation model through the practice in a university. The results show that the GA-BP neural network-based evaluation optimization model can effectively evaluate the online education in the process of analyzing the quality of online education classroom teaching of most professional students.
随着在线教育在世界范围内的普及和应用,如何通过科学的方法评估和分析课堂教学效果已成为高校的重要教学任务之一。基于此,本文研究了 GA-BP 神经网络算法的应用。首先,简要概述了在线教育和 GA-BP 神经网络算法的现状。其次,通过对多个方面的在线教育系统进行调查,从五个方面评估了学生的在线教育课堂教学质量,本文提出了一个更科学的在线教育课堂教学质量评价优化模型,并最终通过在一所大学的实践验证了在线教育教学评价模型的可靠性。结果表明,基于 GA-BP 神经网络的评价优化模型可以有效地评估大多数专业学生在线教育过程中的在线教育课堂教学质量。