PPGenCDR: A Stable and Robust Framework for Privacy-Preserving Cross-Domain Recommendation
Xinting Liao, Weiming Liu, Xiaolin Zheng, Binhui Yao, and Chaochao, Chen

TL;DR
PPGenCDR introduces a stable, privacy-preserving framework for cross-domain recommendation that effectively balances privacy and utility using GANs and differential privacy, outperforming existing models.
Contribution
The paper proposes a novel PPGenCDR framework combining GAN-based privacy preservation with robust knowledge transfer for cross-domain recommendation.
Findings
Outperforms state-of-the-art recommendation models.
Effectively balances privacy and utility.
Demonstrates robustness and stability in privacy-preserving settings.
Abstract
Privacy-preserving cross-domain recommendation (PPCDR) refers to preserving the privacy of users when transferring the knowledge from source domain to target domain for better performance, which is vital for the long-term development of recommender systems. Existing work on cross-domain recommendation (CDR) reaches advanced and satisfying recommendation performance, but mostly neglects preserving privacy. To fill this gap, we propose a privacy-preserving generative cross-domain recommendation (PPGenCDR) framework for PPCDR. PPGenCDR includes two main modules, i.e., stable privacy-preserving generator module, and robust cross-domain recommendation module. Specifically, the former isolates data from different domains with a generative adversarial network (GAN) based model, which stably estimates the distribution of private data in the source domain with Renyi differential privacy (RDP)…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Recommender Systems and Techniques · Mental Health via Writing
