The content delves into the importance of protecting sensitive attributes in recommender systems through Attribute Unlearning. The authors propose a novel approach, focusing on PoT-AU and introducing a two-component loss function for effective unlearning while preserving recommendation performance. Extensive experiments on real-world datasets demonstrate the effectiveness of their methods.
Existing studies predominantly use training data as unlearning targets, but this work introduces a new approach targeting unseen attributes post-training. The proposed method aims to protect user privacy by making target attributes indistinguishable from attackers while maintaining recommendation performance. The study highlights the challenges and solutions for effective attribute unlearning in recommender systems.
The authors conduct experiments on four datasets to evaluate their proposed methods, showcasing the effectiveness of their approach in achieving attribute unlearning and maintaining recommendation performance. They also analyze the impact of key hyperparameters and compare different regularization techniques for preserving model performance during unlearning.
Na inny język
z treści źródłowej
arxiv.org
Głębsze pytania