Personalized learning in education: a machine learning and simulation approach

被引:0
|
作者
Taylor, Ross [1 ]
Fakhimi, Masoud [1 ]
Ioannou, Athina [1 ]
Spanaki, Konstantina [2 ]
机构
[1] Univ Surrey, Surrey Business Sch, Guildford, England
[2] Audencia Business Sch, Nantes, France
关键词
Technological innovation; Simulation; Learning analytics; Machine learning; Personalized learning; ANALYTICS; LITERACY; TEACHER; PATH;
D O I
10.1108/BIJ-06-2023-0380
中图分类号
C93 [管理学];
学科分类号
12 ; 1201 ; 1202 ; 120202 ;
摘要
PurposeThis study proposes an integrated Machine Learning and simulated framework for a personalized learning system. This framework aims to improve the integrity of the provided tasks, adapt to each student individually and ultimately enhance students' academic performance.Design/methodology/approachThis methodology comprises two components. (1) A simulation-based system that utilizes reinforcement algorithms to assign additional questions to students who do not reach pass grade thresholds. (2) A Machine Learning system that uses the data from the system to identify the drivers of passing or failing and predict the likelihood of each student passing or failing based on their engagement with the simulated system.FindingsThe results of this study offer preliminary evidence of the effectiveness of the proposed simulation system and indicate that such a system has the potential to foster improvements in learning outcomes.Research limitations/implicationsAs with all empirical studies, this research has limitations. A simulation study is an abstraction of reality and may not be completely accurate. Student performance in real-world environments may be higher than estimated in this simulation, reducing the required teacher support.Practical implicationsThe developed personalized learning (PL) system demonstrates a strong foundation for improving students' performance, particularly within a blended learning context. The findings indicate that simulated performance using the system exhibited improvement when individual students experienced higher learning benefits tailored to their needs.Social implicationsThe research offers evidence of the effectiveness of personalized learning systems and highlights their capacity to drive improvements in education. The proposed system holds the potential to enhance learning outcomes by tailoring tasks to meet the unique needs of each student.Originality/valueThis study contributes to the growing literature on personalized learning, emphasizing the importance of leveraging machine learning in educational technologies to enable precise predictions of student performance.
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页数:28
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