TL;DR
This paper introduces a post-training attribute unlearning method for recommender systems to protect user privacy by making sensitive attributes indistinguishable, without retraining the model from scratch.
Contribution
The paper proposes a novel post-training attribute unlearning approach using a two-component loss function to obscure sensitive attributes in recommender systems.
Findings
Effective in degrading attacker performance in attribute inference
Maintains recommendation accuracy after unlearning
Works on multiple real-world datasets
Abstract
With the growing privacy concerns in recommender systems, recommendation unlearning, i.e., forgetting the impact of specific learned targets, is getting increasing attention. Existing studies predominantly use training data, i.e., model inputs, as the unlearning target. However, we find that attackers can extract private information, i.e., gender, race, and age, from a trained model even if it has not been explicitly encountered during training. We name this unseen information as attribute and treat it as the unlearning target. To protect the sensitive attribute of users, Attribute Unlearning (AU) aims to degrade attacking performance and make target attributes indistinguishable. In this paper, we focus on a strict but practical setting of AU, namely Post-Training Attribute Unlearning (PoT-AU), where unlearning can only be performed after the training of the recommendation model is…
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