Development path of college labor education based on big data platform in the context of health psychology

IF 3.1 Q1 Mathematics Applied Mathematics and Nonlinear Sciences Pub Date : 2024-01-01 DOI:10.2478/amns-2024-0108
Congcong Li, Xuehui Wang
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Abstract

Labor education is an important content of quality education, and the promotion of higher education cannot be separated from the implementation and practice of labor education. The labor education platform and labor education resource base in colleges and universities are established using the big data platform, which combines Hadoop technology and the HBase database. In order to help students obtain labor education teaching resources more efficiently on the labor education platform, reinforcement learning is combined with a deep neural network to optimize the scheduling of teaching resources, and α -the dispersion recommendation algorithm is used to realize personalized recommendations of teaching resources. With regard to the effectiveness of the labor education platform, load testing and application effects were carried out, and the influencing factors of labor behavior and craftsmanship cultivation of college labor education students were analyzed in depth. The labor education platform’s transaction response time increases by 22.5 seconds when the number of users reaches 5000, according to the results. The personal motivation for craftsmanship in the process of labor education will be affected by the campus culture, and its correlation coefficient is 0.565, and the student’s satisfaction with the platform of labor education reaches 0.825. The innovation and development of labor education in colleges and universities need to fully rely on the big data platform to promote the optimization and sharing of labor education resources and to promote the development of labor education resources. The cultivation of student labor creation and craftsmanship can be ensured through the optimization and sharing of educational resources.
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健康心理学背景下基于大数据平台的高校劳动教育发展路径
劳动教育是素质教育的重要内容,高等教育的推进离不开劳动教育的实施与实践。高校的劳动教育平台和劳动教育资源库是利用 Hadoop 技术和 HBase 数据库相结合的大数据平台建立的。为了帮助学生在劳动教育平台上更高效地获取劳动教育教学资源,将强化学习与深度神经网络相结合,对教学资源进行优化调度,并利用α-分散推荐算法实现教学资源的个性化推荐。针对劳动教育平台的效果,进行了负载测试和应用效果测试,深入分析了高校劳动教育学生劳动行为和工匠精神培养的影响因素。结果显示,当用户数量达到5000时,劳动教育平台的交易响应时间增加了22.5秒。劳动教育过程中个人的工匠精神动机会受到校园文化的影响,其相关系数为0.565,学生对劳动教育平台的满意度达到0.825。高校劳动教育的创新与发展需要充分依托大数据平台,促进劳动教育资源的优化与共享,推动劳动教育资源的发展。学生劳动创造和工匠精神的培养,可以通过教育资源的优化与共享得到保障。
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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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