Research Article Open Access

Intelligent Multi Model Ensemble for Engagement Prediction

Fahmida Begum1 and K Ulaga Priya1
  • 1 Department of Computer Science and Engineering, Vels Institute of Science Technology and Advanced Studies, Chennai Tamil Nadu, India

Abstract

For intelligent educational systems, the ability to monitor and respond to student engagement in real time is essential for enhancing learning outcomes. However, existing models often lack adaptability and practical deployment potential, as they depend on single data modalities, rigid ensemble mechanisms, and post-session analysis. This study introduces an intelligent multimodal ensemble framework designed to address these challenges by predicting student engagement using predefined multimodal educational datasets that include facial expressions, voice tone, physiological signals, and interaction logs. The proposed system leverages deep neural networks (CNNs for spatial and RNNs for temporal analysis) in combination with classical machine learning algorithms (SVMs and Decision Trees), integrated through an adaptive weighting mechanism that dynamically adjusts model contributions based on predictive confidence. Furthermore, explainable AI techniques, particularly SHAP, are incorporated to enhance transparency and interpretability. Experimental evaluations across multiple educational contexts demonstrate the framework’s superior performance in terms of accuracy, generalization, and real-time efficiency. Unlike prior multimodal ensemble approaches, the proposed model uniquely combines adaptive confidence-based weighting and SHAP-driven interpretability, offering a balanced and deployable solution that bridges the gap between accuracy and explainability in real-world learning environments.

Journal of Computer Science
Volume 22 No. 4, 2026, 1421-1433

DOI: https://doi.org/10.3844/jcssp.2026.1421.1433

Submitted On: 11 July 2025 Published On: 28 April 2026

How to Cite: Begum, F. & Priya, K. U. (2026). Intelligent Multi Model Ensemble for Engagement Prediction. Journal of Computer Science, 22(4), 1421-1433. https://doi.org/10.3844/jcssp.2026.1421.1433

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Keywords

  • Student Engagement Prediction
  • Multimodal Data
  • Ensemble Learning
  • Explainable AI
  • Adaptive Weighting