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Manual Label and Machine Learning in Clustering and Predicting Student Performance: A Practice Based on Web-Interactive Teaching Systems

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  • Mengjiao Yin

    (Wuxi Taihu University, China)

  • Hengshan Cao

    (Wuxi Taihu University, China)

  • Zuhong Yu

    (Wuxi Taihu University, China)

  • Xianyu Pan

    (Wuxi Taihu University, China)

Abstract

This study presents the Academic Investment Model (AIM) as a novel approach to predicting student academic performance by incorporating learning styles as a predictive feature. Utilizing data from 138 Marketing students across China, the research employs a combination of machine learning clustering methods and manual feature engineering through a four-quadrant clustering technique. The AIM model delineates student investment into four quadrants based on their time and energy commitment to academic pursuits, distinguishing between result-oriented and process-oriented investments. The findings reveal that the four-quadrant method surpasses machine learning clustering in predictive accuracy, highlighting the robustness of manual feature engineering. The study's significance lies in its potential to guide educators in designing targeted interventions and personalized learning strategies, emphasizing the importance of process-oriented assessment in education. Future research is recommended to expand the sample size and explore the integration of deep learning models for validation.

Suggested Citation

  • Mengjiao Yin & Hengshan Cao & Zuhong Yu & Xianyu Pan, 2024. "Manual Label and Machine Learning in Clustering and Predicting Student Performance: A Practice Based on Web-Interactive Teaching Systems," International Journal of Web-Based Learning and Teaching Technologies (IJWLTT), IGI Global, vol. 19(1), pages 1-33, January.
  • Handle: RePEc:igg:jwltt0:v:19:y:2024:i:1:p:1-33
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