In order to track and comprehend the academic achievement of students, both private and public educational institutions devote a significant amount of resources and labour. One of the difficult issues that institutes deal with on a regular basis is understanding the exam shortcomings of students. The performance of a student is influenced by a variety of factors, including attendance, attentiveness in class, understanding of concepts taught, the teachers ability to deliver the material effectively, timely completion of home assignments, and the concern of parents and teachers for guiding the student through the learning process. We propose a data driven approach that makes use of Machine Learning techniques to generate a classifier called credit score that helps to comprehend the learning journeys of students and identify activities that lead to subpar performances. This would make it easier for educators and institute management to create guidelines for system development to increase productivity. The proposal to use credit score as progress indicator is well suited to be used in a Learning Management System. In this article, we demonstrate the proof of the concept under simplified assumptions using simulated data.
翻译:为了跟踪和理解学生的学术成就,私立和公立教育机构都投入了大量资源和劳动。研究所经常处理的困难问题之一是了解学生考试的缺点。学生的成绩受到各种因素的影响,包括出勤、上课注意、理解所教授的概念、教师有效提供教材的能力、及时完成家庭任务、父母和教师关心通过学习过程指导学生。我们提议采用数据驱动方法,利用机器学习技术产生一个分类器,称为信用分,帮助理解学生的学习历程,并查明导致分数业绩的活动。这将使教育工作者和学院管理人员更容易为系统发展制定指导方针,以提高生产率。将信用分作为进度指标的建议非常适合用于学习管理系统。在本条中,我们用模拟数据来证明简化假设下的概念。