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Privacy-Preserving Personalization in Education: A Federated Recommender System for Student Performance Prediction

Published: September 3, 2025 | arXiv ID: 2509.10516v1

By: Rodrigo Tertulino

Potential Business Impact:

Helps students learn better without sharing private data.

Business Areas:
Personalization Commerce and Shopping

The increasing digitalization of education presents unprecedented opportunities for data-driven personalization, yet it introduces significant student data privacy challenges. Conventional recommender systems rely on centralized data, a paradigm often incompatible with modern data protection regulations. A novel privacy-preserving recommender system is proposed and evaluated to address this critical issue using Federated Learning (FL). The approach utilizes a Deep Neural Network (DNN) with rich, engineered features from the large-scale ASSISTments educational dataset. A rigorous comparative analysis of federated aggregation strategies was conducted, identifying FedProx as a significantly more stable and effective method for handling heterogeneous student data than the standard FedAvg baseline. The optimized federated model achieves a high-performance F1-Score of 76.28\%, corresponding to 82.85\% of the performance of a powerful, centralized XGBoost model. These findings validate that a federated approach can provide highly effective content recommendations without centralizing sensitive student data. Consequently, our work presents a viable and robust solution to the personalization-privacy dilemma in modern educational platforms.

Page Count
29 pages

Category
Computer Science:
Machine Learning (CS)