Making Alice Appear Like Bob: A Probabilistic Preference Obfuscation Method For Implicit Feedback Recommendation Models


연구 분야: Analysis



학회: Joint European Conference on Machine Learning and Knowledge Discovery in Databases


초록

Users’ interaction or preference data used in recommender systems carry the risk of unintentionally revealing users’ private attributes (e.g., gender or race). This risk becomes particularly concerning when the training data contains user preferences that can be used to infer these attributes, especially if they align with common stereotypes. This major privacy issue allows malicious attackers or other third parties to infer users’ protected attributes. Previous efforts to address this issue have added or removed parts of users’ preferences prior to or during model training to improve privacy, which often leads to decreases in recommendation accuracy. In this work, we introduce SBO, a novel probabilistic obfuscation method for user preference data designed to improve the accuracy–privacy trade-off for such recommendation scenarios. We apply SBO to three state-of-the-art recommendation models (i.e., BPR, MultVAE, and LightGCN) and two popular datasets (i.e., MovieLens-1M and LFM-2B). Our experiments reveal that SBO outperforms comparable approaches with respect to the accuracy–privacy trade-off. Specifically, we can reduce the leakage of users’ protected attributes while maintaining on-par recommendation accuracy.


Author Profile
Gustavo Escobedo

Johannes Kepler University Linz Linz Austria

Austria
Author Profile
Marta Moscati

Johannes Kepler University Linz Linz Austria

Austria
Author Profile
Peter Muellner

Know-Center GmbH Graz Austria

Austria

📄 논문 정보

발행 연도 2024년
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출판 국가 Austria
사이트 Springer
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