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Deep learning-based multi-criteria recommender system for technology-enhanced learning

Computer Science

Deep learning-based multi-criteria recommender system for technology-enhanced learning

L. Salau, H. Mohamed, et al.

A hybrid DeepFM-SVD++ model fuses factorization machines and deep neural networks to tackle sparsity, over-specialization, and cold-start in multi-criteria recommender systems, improving personalization in Technology-Enhanced Learning and beyond. This research was conducted by Latifat Salau, Hamada Mohamed, Yunusa Simpa Abdulsalam, and Hassan Mohammed.

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~3 min • Beginner • English
Abstract
Multi-Criteria Recommender Systems (MCRSs) improve personalization by incorporating multiple user preferences. However, their application in Technology-Enhanced Learning (TEL) remains limited due to challenges such as data sparsity, over-specialization, and cold-start problems. Traditional techniques, such as Singular Value Decomposition (SVD) and SVD++, struggle to effectively model the complex interactions within multi-criteria rating data, leading to suboptimal recommendations. This paper introduces a hybrid DeepFM-SVD++ model, which integrates deep learning and factorization-based techniques to improve multi-criteria recommendations. The model captures both low-order feature interactions using factorization machines and high-order dependencies through deep neural networks, enabling more adaptive recommendations. To evaluate its performance, the model is tested on two multi-criteria datasets: ITM-Rec (TEL domain) and Yahoo Movies (non-TEL domain). The experimental results show that DeepFM-SVD++ consistently outperforms the traditional techniques across multiple evaluation metrics. The findings highlight significant improvements in accuracy, demonstrating the model's effectiveness in sparse datasets and its generalization across domains. By addressing the limitations of existing MCRS techniques, this study contributes to advancing personalized learning recommendations in TEL and expands the applicability of deep learning-based MCRS beyond educational contexts.
Publisher
Scientific Reports
Published On
Apr 16, 2025
Authors
Latifat Salau, Hamada Mohamed, Yunusa Simpa Abdulsalam, Hassan Mohammed
Tags
Multi-Criteria Recommender Systems
DeepFM-SVD++
Technology-Enhanced Learning
Factorization Machines
Deep Neural Networks
Data Sparsity and Cold-Start
Cross-Domain Generalization
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