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Autori principali: Sun, Yuhao, Zhang, Yihua, Liu, Gaowen, Xie, Hongtao, Liu, Sijia
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2508.10065
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author Sun, Yuhao
Zhang, Yihua
Liu, Gaowen
Xie, Hongtao
Liu, Sijia
author_facet Sun, Yuhao
Zhang, Yihua
Liu, Gaowen
Xie, Hongtao
Liu, Sijia
contents With the increasing demand for the right to be forgotten, machine unlearning (MU) has emerged as a vital tool for enhancing trust and regulatory compliance by enabling the removal of sensitive data influences from machine learning (ML) models. However, most MU algorithms primarily rely on in-training methods to adjust model weights, with limited exploration of the benefits that data-level adjustments could bring to the unlearning process. To address this gap, we propose a novel approach that leverages digital watermarking to facilitate MU by strategically modifying data content. By integrating watermarking, we establish a controlled unlearning mechanism that enables precise removal of specified data while maintaining model utility for unrelated tasks. We first examine the impact of watermarked data on MU, finding that MU effectively generalizes to watermarked data. Building on this, we introduce an unlearning-friendly watermarking framework, termed Water4MU, to enhance unlearning effectiveness. The core of Water4MU is a bi-level optimization (BLO) framework: at the upper level, the watermarking network is optimized to minimize unlearning difficulty, while at the lower level, the model itself is trained independently of watermarking. Experimental results demonstrate that Water4MU is effective in MU across both image classification and image generation tasks. Notably, it outperforms existing methods in challenging MU scenarios, known as "challenging forgets".
format Preprint
id arxiv_https___arxiv_org_abs_2508_10065
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Invisible Watermarks, Visible Gains: Steering Machine Unlearning with Bi-Level Watermarking Design
Sun, Yuhao
Zhang, Yihua
Liu, Gaowen
Xie, Hongtao
Liu, Sijia
Cryptography and Security
Computer Vision and Pattern Recognition
With the increasing demand for the right to be forgotten, machine unlearning (MU) has emerged as a vital tool for enhancing trust and regulatory compliance by enabling the removal of sensitive data influences from machine learning (ML) models. However, most MU algorithms primarily rely on in-training methods to adjust model weights, with limited exploration of the benefits that data-level adjustments could bring to the unlearning process. To address this gap, we propose a novel approach that leverages digital watermarking to facilitate MU by strategically modifying data content. By integrating watermarking, we establish a controlled unlearning mechanism that enables precise removal of specified data while maintaining model utility for unrelated tasks. We first examine the impact of watermarked data on MU, finding that MU effectively generalizes to watermarked data. Building on this, we introduce an unlearning-friendly watermarking framework, termed Water4MU, to enhance unlearning effectiveness. The core of Water4MU is a bi-level optimization (BLO) framework: at the upper level, the watermarking network is optimized to minimize unlearning difficulty, while at the lower level, the model itself is trained independently of watermarking. Experimental results demonstrate that Water4MU is effective in MU across both image classification and image generation tasks. Notably, it outperforms existing methods in challenging MU scenarios, known as "challenging forgets".
title Invisible Watermarks, Visible Gains: Steering Machine Unlearning with Bi-Level Watermarking Design
topic Cryptography and Security
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.10065