Multi-Objective Unlearning in Recommender Systems via Preference Guided Pareto Exploration

Published: 2025, Last Modified: 14 Jan 2026IEEE Trans. Serv. Comput. 2025EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Recommender systems typically collect and analyze user data, which raises the risk of privacy invasion. User-sensitive information can be leaked from the user portrait, e.g., user embedding, within recommender models. Therefore, the task of recommendation unlearning has been widely studied, aiming to eliminate the influence of target data on recommender models. This paper explores the extended concept of unlearning, which seeks to remove sensitive user information while retaining the essential information for recommendation purposes. Previous studies have primarily focused on extended unlearning in isolation, e.g., attribute unlearning. However, users often need to fulfill multiple unlearning objectives simultaneously. Therefore, we bridge this gap by introducing post-training multi-objective unlearning, which allows the concurrent fulfillment of multiple unlearning objectives while preserving recommendation performance. Note that the objectives may conflict with each other, leading to the compromise of one objective when minimizing the overall objective value. To address this challenge, we introduce a Pareto exploration approach that incorporates the recommendation performance as optimization guidance, allowing us to obtain the Pareto optimal solution through the trade-off between conflicting objectives. To adapt to practical scenarios where data is not accessible post-training, we utilize a data-free regularization to guide recommendation performance. We conducted extensive experiments on three real-world datasets, which demonstrate the effectiveness of our proposed method.
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