提高学生学习体验的机器学习技术

R. R. Tribhuvan, T. Bhaskar
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引用次数: 0

摘要

基于结果的学习(OBL)是一种基于一组预定目标的可靠的学习技术。项目教育目标(PEOs)、项目成果(POs)和课程成果是OBL的三个组成部分。教师可以在每门课程结束时采用许多基于机器学习的建议行动,以提高学习质量,从而提高整体教育质量。由于涉及的课程和教师数量庞大,可能会提倡有害的行为,导致不必要的和错误的选择。本研究基于大学课程要求、学习成绩和课程学习结果评估来描述教育系统,并利用各种机器学习算法来预测适当的行动。数据集转化为不同的问题转换方法和自适应方法,如一对一、二值显著性、命名能力集、序列分类和自定义分类ML-KNN。建议的基于推荐机器学习的系统被用作计算机和信息科学研究所的案例研究,以协助教职员提高学习质量和教学方法。结果表明,所提出的推荐系统为改善学生的学习体验提供了更多的措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Techniques for Enhancing Student Learning Experiences
Outcome-based learning (OBL) is a tried-and-true learning technique based on a set of predetermined objectives. Program Educational Objectives (PEOs), Program Outcomes (POs), and Course Outcomes are the three components of OBL (COs). Faculty members may adopt many ML-based advised actions at the conclusion of each course to improve the quality of learning and, as a result, the overall education. Due to the huge number of courses and faculty members involved, harmful behaviors may be advocated, resulting in unwanted and incorrect choices. The education system is described in this study based on college course requirements, academic records, and course learning results evaluations is provided for anticipating appropriate actions utilizing various machine learning algorithms. Dataset translates to different problem conversion methods and adaptive methods such as one-versus-all, binary significance, naming power set, series classification and custom classification ML-KNN. The suggested recommender ML-based system is used as a case study at the Institute of Computer and Information Sciences to assist academic staff in boosting learning quality and instructional methodologies. The results suggest that the proposed recommendation system offers more measures to improve students' learning experiences.
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