使用机器学习的教学风格推荐

M. Hariharan, Kavitha Sooda, N. Vineeth, G. Rekha
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引用次数: 3

摘要

本文旨在弥合工程教育中教与学之间的鸿沟。不同的学生使用不同的技巧或风格学习。一个班级里可以有不同类型的学习者。教师需要了解这种差异,以便在课堂上有效地传递他们的内容。该系统帮助教师根据学生的学习风格来理解课堂构成,并提出具体的教学方法,对整个班级都有帮助。该系统使用一项名为学习风格指数(ILS)的调查来了解班级的学习风格。使用机器学习模型根据学习风格建议可能的教学方法,以确保教师有效的课堂教学。该模型在定制的数据集上进行训练以理解样式。未来,这种模式可以扩展到工程以外的学科,所有院系都可以使用,无论他们在该领域的经验如何。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Teaching Style Recommender using Machine Learning
this paper aims to bridge the gap between teaching and learning in engineering education. Different students learn using different techniques or styles. There can be different kinds of learners within a single class. The teacher needs to understand this difference in order to deliver their contents in the classroom effectively. The proposed system aids the faculty in understanding the classroom composition in terms of the learning styles of students and suggests specific teaching methods that can be helpful for the entire class. The system uses a survey called the Index of Learning Styles (ILS) to understand the learning style of the class. A machine learning model is used to suggest the possible teaching methods based on the learning styles to ensure effective classroom delivery by the faculty. The model is trained on a custom made dataset to understand the styles. In future, this model can be extended for subjects other than engineering and this could be used by all faculties regardless of their experience in the field.
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