Evaluation Method of Medical Students' Public English Learning Engagement Based on Machine Learning

Hang Dai, Tianyu Zhao
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Abstract

As one of the important groups in higher education, it is very important for medical students to pay attention to their learning path, learning state and learning effect in Public English curriculum. Based on the theory of learning engagement, this study chooses medical students' Public English learning engagement as the research object, and construct the learning engagement evaluation index system based on machine learning. This study selects 131 students majoring in clinical medicine and medical imaging of 2020 as the research objects, and conducts mixed Public English teaching practice for medical students and conducts relevant research on learning engagement on this basis. The results show that the selected medical students' behavioral engagement, cognitive engagement and emotional engagement in Public English learning are at the upper middle level as a whole. Teachers and schools should pay attention to these students' engagement in the three dimensions, especially in emotional engagement, and pay special attention to students' learning emotional experience.
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基于机器学习的医学生公共英语学习参与度评价方法
医学生作为高等教育的重要群体之一,在公共英语课程中关注他们的学习路径、学习状态和学习效果是非常重要的。本研究以学习投入理论为基础,以医学生公共英语学习投入为研究对象,构建了基于机器学习的学习投入评价指标体系。本研究选取了131名2020级临床医学与医学影像学专业学生作为研究对象,在此基础上对医学生进行混合公共英语教学实践,并对学习投入进行相关研究。结果表明,所选医学生公共英语学习的行为投入、认知投入和情感投入总体上处于中上水平。教师和学校应该关注这些学生在三个维度上的投入,特别是在情感投入上,并特别关注学生的学习情感体验。
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