开发一个学习分析模型来探索英国计算机科学学生的学习动机

Hafsa Al Ansari, Rupert R. Ward, Richard Hill
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引用次数: 2

摘要

本研究探讨如何运用学习分析来探讨学生的学习动机,进而提升学生的学习表现。将采用混合方法收集英国高等教育部门计算机科学专业学生的数据。收集到的数据将使用专题分析进行分析,以建立一个理论框架,随后将使用结构方程模型进行测试。学生动机因素的识别有助于导师和学习分析师更好地了解学生的学习动机,并相应地调整他们的学习实践。
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Developing a Learning Analytics Model to Explore Computer Science Student Motivation in the UK
This study investigates enhancing student learning and performance by exploring student motivation through the use of learning analytics. A mixed-methods approach will be used to collect data from Computer Science students within the UK higher education sector. The collected data will be analyzed using thematic analysis to develop a theoretical framework that will be tested subsequently using structural equation modeling. The identification of student motivation factors helps tutors and learning analysts to better understand student learning motivation and adapt their learning practices accordingly.
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