Department of Sports, Central China Normal University, Wuhan, Hubei 430070, China.
Comput Intell Neurosci. 2022 Apr 12;2022:4620599. doi: 10.1155/2022/4620599. eCollection 2022.
With the advent of the big data era, the combination of information technology and education has become an important way for the development of the industry. The large-scale realization of teaching tasks under the background of information data requires the prediction and analysis of learners' characteristics, behavior, and development trend. Based on the above situation, this paper uses discrete dynamic modeling technology in big data environment to study the learners' behavior in physical education teaching. By quantifying the learning process data, the feature points of each learner are extracted to realize the personalized construction of dynamic learning data. Due to the rapid development of network technology, we mainly analyze the online education platform and explore the influencing factors of learners' behavior characteristics from many aspects. Finally, it carries out dynamic modeling and prediction for physical education learners from the aspect of achievement change, uses the grey model to build the achievement change system, and combines the dynamic modeling technology to reflect the development trend of achievement. The results show that the main factor affecting learners' behavior change in physical education is video learning. Most students are passive and lack initiative in the learning process. Discrete dynamic modeling technology can improve the accuracy of predicting student achievement changes and provide effective data for the research content.
随着大数据时代的到来,信息技术与教育的结合成为行业发展的重要途径。在信息数据背景下,大规模实现教学任务需要预测和分析学习者的特征、行为和发展趋势。基于上述情况,本文利用大数据环境中的离散动态建模技术研究体育教学中的学习者行为。通过量化学习过程数据,提取每个学习者的特征点,实现动态学习数据的个性化构建。由于网络技术的快速发展,我们主要分析在线教育平台,并从多个方面探讨学习者行为特征的影响因素。最后,从成绩变化的角度对体育学习者进行动态建模和预测,利用灰色模型构建成绩变化系统,并结合动态建模技术反映成绩的发展趋势。结果表明,影响体育学习者行为变化的主要因素是视频学习。大多数学生在学习过程中被动,缺乏主动性。离散动态建模技术可以提高预测学生成绩变化的准确性,并为研究内容提供有效的数据。