Research on the Application of Big Data in College Physical Education Teaching and Training

Author:

Wang Dongle1,Chen Yong2

Affiliation:

1. School of Outdoor Sports , Guilin Tourism University , Guilin , Guangxi , China .

2. Employment Guidance Department of the Student Affairs Office , Nanning University , Nanning , Guangxi , China .

Abstract

Abstract During college physical training, a substantial amount of data is continually generated through various activities. Historically, technological constraints have hindered the effective collection and utilization of this data, limiting its potential to enhance physical education (PE) and training through intelligent support. This study explores the application of data mining (DM) in managing and analyzing PE classrooms. It aims to streamline PE teaching management and evaluation, conduct in-depth analyses of students’ physical fitness data, and ultimately elevate the quality of school PE instruction. In designing a big data system for this purpose, data collection is prioritized based on its difficulty. To facilitate data analysis and presentation, a high-performance framework for storing and analyzing data is selected. The results indicate a 13.28% improvement in accuracy compared to traditional assessment models. By leveraging DM in PE classroom assessments, we can mitigate subjectivity and uncertainty associated with manual weight and correlation coefficient selection. This approach enhances the intelligence, adaptability, and usability of the assessment model, paving the way for more effective PE teaching and learning.

Publisher

Walter de Gruyter GmbH

Reference21 articles.

1. Wang, J. (2019). Analysis of the Role of Big Data Technology in the Construction of College Sports Information. Journal of Jilin Radio and Television University, 2019(03), 8-9.

2. Qin, J. (2018). Journal of Jilin Radio and Television University. Sports Science and Technology Literature Bulletin, 26(12), 99-101.

3. Feng, H. (2018). Research on the Operation and Management Mode of University Sports Venues. Contemporary Sports Technology, 8(26), 162-163.

4. Zhang, J. (2018). Innovative Thinking on College Sports Management under the Background of Big Data. Motion, 2018(13), 1-3.

5. Q, Y. (2020). Network education recommendation and teaching resource sharing based on improved neural network. Journal of Intelligent and Fuzzy Systems, 39(4), 5511-5520.

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