基于线性回归分析的网络课程学习效果评价

Peijiang Chen, Hu Han, Mei Zhang
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引用次数: 0

摘要

网络课程以其不受时间和空间限制、共享性强等优点得到迅速发展,在高等教育中得到广泛应用。提高网络课程的学习效果也是大数据时代研究的难点之一。以知会书平台的汽车理论在线课程为例,通过选取和提取学生在学习过程中的主要学习行为数据,运用相关分析和线性回归方法,分析在线课程学习的影响因素,建立线性回归预测模型。结果表明,学生在线课程登录次数、互动次数。而考试成绩是预测他们学习成绩的关键指标。在此基础上,提出了提高网络课程学习效果的对策建议。
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Learning Effect Evaluation of Online Course Based on Linear Regression Analysis
Online courses have been developed rapidly due to their advantages of being free from time and space constraints and sharing, and have been widely used in higher education. Improving the learning effect of online courses is also one of the difficulties of research in the era of big data. Taking the automobile theory online course on the Zhihuishu platform as an example, we analyze the influencing factors of online courses learning and establish a linear regression prediction model with correlation analysis and linear regression methods by selecting and extracting the data of students' main learning behaviors in the learning process. The results show that the number of student online course logins, the number of interactions. and test scores are the key indicators to predict their learning performance. On this basis, countermeasures and suggestions are put forward to improve the learning effect of online courses.
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