A federated learning framework based on transfer learning and knowledge distillation for targeted advertising

Author:

Su Caiyu1,Wei Jinri1,Lei Yuan2ORCID,Li Jiahui3

Affiliation:

1. Guangxi Vocational & Technical Institute of Industry, Nanning, Guangxi, China

2. Universiti Pendidikan Sultan Idris, Tanjong Malim, Malaysia

3. Guangxi University of Foreign Languages, Nanning, Guangxi, China

Abstract

The rise of targeted advertising has led to frequent privacy data leaks, as advertisers are reluctant to share information to safeguard their interests. This has resulted in isolated data islands and model heterogeneity challenges. To address these issues, we have proposed a C-means clustering algorithm based on maximum average difference to improve the evaluation of the difference in distribution between local and global parameters. Additionally, we have introduced an innovative dynamic selection algorithm that leverages knowledge distillation and weight correction to reduce the impact of model heterogeneity. Our framework was tested on various datasets and its performance was evaluated using accuracy, loss, and AUC (area under the ROC curve) metrics. Results showed that the framework outperformed other models in terms of higher accuracy, lower loss, and better AUC while requiring the same computation time. Our research aims to provide a more reliable, controllable, and secure data sharing framework to enhance the efficiency and accuracy of targeted advertising.

Funder

The Young and Middle-aged Teachers’ Basic Ability Improvement of Guangxi Colleges

Publisher

PeerJ

Subject

General Computer Science

Reference43 articles.

1. Reminder care system: an activity-aware cross-device recommendation system;Altulyan,2019

2. Reminder of the first paper on transfer learning in neural networks, 1976;Bozinovski;Informatica-An International Journal of Computing and Informatics,2020

3. GS-WGAN: a gradient-sanitized approach for learning differentially private generators;Chen;Advances in Neural Information Processing Systems,2020

4. A boosting-aided adaptive cluster-based undersampling approach for treatment of class imbalance problem;Devi;International Journal of Data Warehousing and Mining,2020

5. Pricing and personal data collection strategies of online platforms in the face of privacy concerns;Duan;Electronic Commerce Research,2022

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