A Review of Data Mining in Personalized Education: Current Trends and Future Prospects

Zhang Xiong, Haoxuan Li, Zhuang Liu, Zhuofan Chen, Hao Zhou, Wenge Rong, Yuanxin Ouyang

PDF(1498 KB)
PDF(1498 KB)
Frontiers of Digital Education ›› 2024, Vol. 1 ›› Issue (1) : 26-50. DOI: 10.1007/s44366-024-0019-6
Theoretical Explorations in Digital Education

A Review of Data Mining in Personalized Education: Current Trends and Future Prospects

Author information +
History +

Abstract

Personalized education, tailored to individual student needs, leverages educational technology and artificial intelligence (AI) in the digital age to enhance learning effectiveness. The integration of AI in educational platforms provides insights into academic performance, learning preferences, and behaviors, optimizing the personal learning process. Driven by data mining techniques, it not only benefits students but also provides educators and institutions with tools to craft customized learning experiences. To offer a comprehensive review of recent advancements in personalized educational data mining, this paper focuses on four primary scenarios: educational recommendation, cognitive diagnosis, knowledge tracing, and learning analysis. This paper presents a structured taxonomy for each area, compiles commonly used datasets, and identifies future research directions, emphasizing the role of data mining in enhancing personalized education and paving the way for future exploration and innovation.

Keywords

personalized education, data mining, educational recommendation (ER), cognitive diagnosis, knowledge tracing, learning analysis

Cite this article

Download citation ▾
Zhang Xiong, Haoxuan Li, Zhuang Liu, Zhuofan Chen, Hao Zhou, Wenge Rong, Yuanxin Ouyang. A Review of Data Mining in Personalized Education: Current Trends and Future Prospects. Frontiers of Digital Education, 2024, 1(1): 26‒50 https://doi.org/10.1007/s44366-024-0019-6

RIGHTS & PERMISSIONS

2024 Higher Education Press
AI Summary AI Mindmap
PDF(1498 KB)

Accesses

Citations

Detail

Sections
Recommended

/