Using Explainable Machine Learning to Automatically Provide Feedback to Students Based on Data Analysis

Kipkirui Keter, Aden Joseph, Jabir Mohamed
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Abstract

Providing feedback to students is one of the most powerful practices that have enhanced education in the world today. Despite there being useful feedback provided by students’ self-regulation and teachers’ feedback provision, there is still a need for feedback that provides meaningful insights or actionable information about the reasons behind it, which is not provided by the said feedback. This paper explores how we can use explainable machine learning to compute data-driven feedback concerning students’ academic performance and generate actionable recommendations which are beneficial for students and teachers. This method has been developed based on LMS (Learning Management System) data from a university course. The effectiveness of the proposed approach has been evaluated with the results demonstrating 90% accuracy.
基于数据分析,使用可解释的机器学习自动为学生提供反馈
向学生提供反馈是当今世界上加强教育的最有力的做法之一。尽管学生的自我调节和教师的反馈提供了有用的反馈,但仍然需要反馈提供关于其背后原因的有意义的见解或可操作的信息,而上述反馈没有提供这些信息。本文探讨了如何使用可解释的机器学习来计算有关学生学习成绩的数据驱动反馈,并生成对学生和教师有益的可操作建议。该方法是基于某大学课程的LMS(学习管理系统)数据开发的。该方法的有效性已被评估,结果显示准确率为90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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