Department of Paediatric Dentistry & Orthodontics, Faculty of Dentistry, Universiti Malaya, 50603, Kuala Lumpur, Malaysia.
Department of Restorative Dentistry, Faculty of Dentistry, Universiti Malaya, 50603, Kuala Lumpur, Malaysia.
BMC Med Educ. 2024 Jan 11;24(1):58. doi: 10.1186/s12909-023-05022-5.
Growing demand for student-centered learning (SCL) has been observed in higher education settings including dentistry. However, application of SCL in dental education is limited. Hence, this study aimed to facilitate SCL application in dentistry utilising a decision tree machine learning (ML) technique to map dental students' preferred learning styles (LS) with suitable instructional strategies (IS) as a promising approach to develop an IS recommender tool for dental students.
A total of 255 dental students in Universiti Malaya completed the modified Index of Learning Styles (m-ILS) questionnaire containing 44 items which classified them into their respective LS. The collected data, referred to as dataset, was used in a decision tree supervised learning to automate the mapping of students' learning styles with the most suitable IS. The accuracy of the ML-empowered IS recommender tool was then evaluated.
The application of a decision tree model in the automation process of the mapping between LS (input) and IS (target output) was able to instantly generate the list of suitable instructional strategies for each dental student. The IS recommender tool demonstrated perfect precision and recall for overall model accuracy, suggesting a good sensitivity and specificity in mapping LS with IS.
The decision tree ML empowered IS recommender tool was proven to be accurate at matching dental students' learning styles with the relevant instructional strategies. This tool provides a workable path to planning student-centered lessons or modules that potentially will enhance the learning experience of the students.
在高等教育环境中,包括牙科在内,人们越来越关注以学生为中心的学习(SCL)。然而,SCL 在牙科教育中的应用有限。因此,本研究旨在利用决策树机器学习(ML)技术将牙科学生的偏好学习方式(LS)与合适的教学策略(IS)进行匹配,为牙科学生开发一种教学策略推荐工具,从而促进 SCL 在牙科中的应用。
马来西亚大学共有 255 名牙科学生完成了包含 44 个项目的改良学习风格指数(m-ILS)问卷,将他们分为各自的 LS。将收集到的数据(称为数据集)用于决策树监督学习,以实现学生学习风格与最合适的 IS 之间的自动映射。然后评估了 ML 增强型教学策略推荐工具的准确性。
决策树模型在 LS(输入)和 IS(目标输出)之间映射自动化过程中的应用能够立即为每个牙科学生生成适合的教学策略列表。IS 推荐工具在整体模型准确性方面表现出完美的精度和召回率,表明在 LS 与 IS 映射方面具有良好的灵敏度和特异性。
决策树 ML 增强型教学策略推荐工具在匹配牙科学生的学习方式与相关教学策略方面被证明是准确的。该工具为规划以学生为中心的课程或模块提供了可行的途径,这可能会增强学生的学习体验。