基于深度学习算法的教育效果评价探究

IF 1.7 4区 心理学 Q3 PSYCHOLOGY, BIOLOGICAL
Dong Hao , Wang Guohua
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引用次数: 0

摘要

随着当今社会的快速发展,在教育影响个人未来发展的背景下,人们越来越重视教育。各类线上、线下教育机构如雨后春笋般涌现。然而,影响教育效果的因素众多而复杂。学前教育作为儿童早期学习中非常重要的一部分,应该受到更多的关注。深度学习算法可以通过海量数据计算,对影响学前教育的因素进行合理分类和规划,保证资源的合理配置,节省教育资源配置中浪费的时间和精力成本。可以合理评估学前教育机构和组织的教育效果。本文将深度学习算法应用于学前教育效果评估。对比了使用卷积神经网络和未使用算法的学前教育机构学前教育效果的相关数据。实验结果表明,卷积神经网络算法和传统人工测量数据的专家识别率分别为98.8%和92.55%。在教学质量评估的时间层面,对比了五种算法和 100 组相关实验数据。在特征搜索的准确率方面,卷积神经网络算法的平均准确率为 97.96%,而传统人工搜索的准确率为 53.9%。因此,将深度学习中的卷积神经网络算法应用到学前教育效果评价中更加高效,能从多方面提高评价效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation on evaluation of education effect based on deep learning algorithm

With the rapid development of society today, in the context of the impact of education on personal future development, people have increasingly attached importance to education. Various types of online and offline education institutions have mushroomed. However, the factors that affect the effectiveness of education are numerous and complex. As a very important part of early childhood learning, preschool education should receive more attention. The deep learning algorithm can reasonably classify and plan the factors affecting preschool education through massive data calculations to ensure the reasonable allocation of resources and save the time and energy costs wasted in allocating educational resources. The educational effectiveness of preschool education institutions and organizations can be reasonably evaluated. This article applied deep learning algorithms to the evaluation of preschool education effectiveness. Data related to the effectiveness of preschool education in preschool education institutions using convolutional neural networks and not using algorithms were compared. The experimental results showed that the expert recognition rates of the convolutional neural network algorithm and traditional manual measurement data were 98.8% and 92.55%, respectively. At the time level of teaching quality estimation, five algorithms and 100 sets of relevant experimental data were compared. In terms of the accuracy of feature search, the average accuracy of the convolutional neural network algorithm was 97.96%, while the accuracy of the traditional manual search was 53.9%. Therefore, the application of the convolutional neural network algorithm in deep learning to the evaluation of preschool education effectiveness was more efficient and efficient and could improve the evaluation effect from various aspects.

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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
53
期刊介绍: Learning and Motivation features original experimental research devoted to the analysis of basic phenomena and mechanisms of learning, memory, and motivation. These studies, involving either animal or human subjects, examine behavioral, biological, and evolutionary influences on the learning and motivation processes, and often report on an integrated series of experiments that advance knowledge in this field. Theoretical papers and shorter reports are also considered.
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