Recommendation Unlearning via Matrix Correction
Jiahao Liu, Dongsheng Li, Hansu Gu, Tun Lu, Jiongran Wu, Peng Zhang,, Li Shang, Ning Gu

TL;DR
This paper introduces IMCorrect, a matrix correction method for recommendation unlearning that efficiently removes specific data from recommender systems without retraining, improving privacy, security, and utility.
Contribution
IMCorrect is a novel whitebox approach that corrects interaction and mapping matrices for recommendation unlearning, offering improved efficiency, completeness, and utility over existing methods.
Findings
IMCorrect outperforms existing methods in unlearning effectiveness.
It achieves better balance between utility and privacy.
The method supports incremental learning from new data.
Abstract
Recommender systems are important for providing personalized services to users, but the vast amount of collected user data has raised concerns about privacy (e.g., sensitive data), security (e.g., malicious data) and utility (e.g., toxic data). To address these challenges, recommendation unlearning has emerged as a promising approach, which allows specific data and models to be forgotten, mitigating the risks of sensitive/malicious/toxic user data. However, existing methods often struggle to balance completeness, utility, and efficiency, i.e., compromising one for the other, leading to suboptimal recommendation unlearning. In this paper, we propose an Interaction and Mapping Matrices Correction (IMCorrect) method for recommendation unlearning. Firstly, we reveal that many collaborative filtering (CF) algorithms can be formulated as mapping-based approach, in which the recommendation…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Graph Neural Networks · Mental Health via Writing
