Towards Human-Centered Early Prediction Models for Academic Performance in Real-World Contexts
Towards Human-Centered Early Prediction Models for Academic Performance in Real-World Contexts
Supporting student success requires collaboration among multiple stakeholders. Researchers have explored machine learning models for academic performance prediction; yet key challenges remain in ensuring these models are interpretable, equitable, and actionable within real-world educational support systems. First, many models prioritize predictive accuracy but overlook human-centered machine learning principles, limiting trust among students and reducing their usefulness for educators and institutional decision-makers. Second, most models require at least a month of data before making reliable predictions, delaying opportunities for early intervention. Third, current models primarily rely on sporadically collected, classroom-derived data, missing broader behavioral patterns that could provide more continuous and actionable insights. To address these gaps, we present three modeling approaches-LR, 1D-CNN, and MTL-1D-CNN-to classify students as low or high academic performers. We evaluate them based on explainability, fairness, and generalizability to assess their alignment with key social values. Using behavioral and self-reported data collected within the first week of two Spring terms, we demonstrate that these models can identify at-risk students as early as week one. However, trade-offs across human-centered machine learning principles highlight the complexity of designing predictive models that effectively support multi-stakeholder decision-making and intervention strategies. We discuss these trade-offs and their implications for different stakeholders, outlining how predictive models can be integrated into student support systems. Finally, we examine broader socio-technical challenges in deploying these models and propose future directions for advancing human-centered, collaborative academic prediction systems.
Han Zhang、Yiyi Ren、Paula S. Nurius、Jennifer Mankoff、Anind K. Dey
教育科学、科学研究
Han Zhang,Yiyi Ren,Paula S. Nurius,Jennifer Mankoff,Anind K. Dey.Towards Human-Centered Early Prediction Models for Academic Performance in Real-World Contexts[EB/OL].(2025-04-16)[2025-06-03].https://arxiv.org/abs/2504.12236.点此复制
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