Affiliation:
1. School of Space and Information Technology , Siberian Federal University , Krasnoyarsk , Russia
Abstract
Abstract
The article is focused on the problem of early prediction of students’ learning failures with the purpose of their possible prevention by timely introducing supportive measures. We propose an approach to designing a predictive model for an academic course or module taught in a blended learning format. We introduce certain requirements to predictive models concerning their applicability to the educational process such as interpretability, actionability, and adaptability to a course design. We test three types of classifiers meeting these requirements and choose the one that provides best performance starting from the early stages of the semester, and therefore provides various opportunities to timely support at-risk students. Our empirical studies confirm that the proposed approach is promising for the development of an early warning system in a higher education institution. Such systems can positively influence student retention rates and enhance learning and teaching experience for a long term.
Reference36 articles.
1. 1. Ferguson, R. Learning Analytics: Drivers, Developments and Challenges. – International Journal of Technology Enhanced Learning, Vol. 4, 2012, No 2, pp. 304-317.10.1504/IJTEL.2012.051816
2. 2. Greller, W., H. Drachsler. Translating Learning into Numbers: A Generic Framework for Learning Analytics. – Journal of Educational Technology & Society, Vol 15, 2012, No 3, pp. 42-57.
3. 3. Klein, C., R. M. Hess. Using Learning Analytics to Improve Student Learning Outcomes Assessment: Benefits, Constraints, & Possibilities. – In: Learning Analytics in Higher Education. Routledge, 2018, pp. 140-159.
4. 4. Siemens, G., D. Gasevic. Guest Editorial-Learning and Knowledge Analytics. – Journal of Educational Technology & Society, Vol. 15, 2012, No 3, pp. 1-2.
5. 5. Avella, J. T., M. Kebritchi, S. G. Nunn, T. Kanai. Learning Analytics Methods, Benefits, and Challenges in Higher Education: A Systematic Literature Review. – Online Learning, Vol. 20, 2016, No 2, pp. 13-29.10.24059/olj.v20i2.790
Cited by
14 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献