A Privacy-Preserving Framework for Advertising Personalization Incorporating Federated Learning and Differential Privacy
- URL: http://arxiv.org/abs/2507.12098v1
- Date: Wed, 16 Jul 2025 10:07:19 GMT
- Title: A Privacy-Preserving Framework for Advertising Personalization Incorporating Federated Learning and Differential Privacy
- Authors: Xiang Li, Yifan Lin, Yuanzhe Zhang,
- Abstract summary: The framework combines distributed feature extraction, dynamic privacy budget allocation, and robust model aggregation to balance model accuracy, communication overhead, and privacy protection.<n> Experimental results demonstrate that the framework achieves dual optimization of recommendation accuracy and system efficiency while ensuring privacy.
- Score: 10.908551029176822
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: To mitigate privacy leakage and performance issues in personalized advertising, this paper proposes a framework that integrates federated learning and differential privacy. The system combines distributed feature extraction, dynamic privacy budget allocation, and robust model aggregation to balance model accuracy, communication overhead, and privacy protection. Multi-party secure computing and anomaly detection mechanisms further enhance system resilience against malicious attacks. Experimental results demonstrate that the framework achieves dual optimization of recommendation accuracy and system efficiency while ensuring privacy, providing both a practical solution and a theoretical foundation for applying privacy protection technologies in advertisement recommendation.
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