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Soft Weighted Machine Unlearning

Soft Weighted Machine Unlearning

来源:Arxiv_logoArxiv
英文摘要

Machine unlearning, as a post-hoc processing technique, has gained widespread adoption in addressing challenges like bias mitigation and robustness enhancement, colloquially, machine unlearning for fairness and robustness. However, existing non-privacy unlearning-based solutions persist in using binary data removal framework designed for privacy-driven motivation, leading to significant information loss, a phenomenon known as over-unlearning. While over-unlearning has been largely described in many studies as primarily causing utility degradation, we investigate its fundamental causes and provide deeper insights in this work through counterfactual leave-one-out analysis. In this paper, we introduce a weighted influence function that assigns tailored weights to each sample by solving a convex quadratic programming problem analytically. Building on this, we propose a soft-weighted framework enabling fine-grained model adjustments to address the over-unlearning challenge. We demonstrate that the proposed soft-weighted scheme is versatile and can be seamlessly integrated into most existing unlearning algorithms. Extensive experiments show that in fairness- and robustness-driven tasks, the soft-weighted scheme significantly outperforms hard-weighted schemes in fairness/robustness metrics and alleviates the decline in utility metric, thereby enhancing machine unlearning algorithm as an effective correction solution.

Xinbao Qiao、Ningning Ding、Yushi Cheng、Meng Zhang

计算技术、计算机技术

Xinbao Qiao,Ningning Ding,Yushi Cheng,Meng Zhang.Soft Weighted Machine Unlearning[EB/OL].(2025-05-24)[2025-06-12].https://arxiv.org/abs/2505.18783.点此复制

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