cs.AI updates on arXiv.org 07月30日 12:11
Zero-Shot Machine Unlearning with Proxy Adversarial Data Generation
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本文提出一种名为ZS-PAG的机器去学习新框架,通过生成对抗样本近似未访问数据,精准定位子空间进行去学习,并设计基于影响的伪标签策略,有效防止过度去学习,提升模型去学习后的性能。

arXiv:2507.21738v1 Announce Type: cross Abstract: Machine unlearning aims to remove the influence of specific samples from a trained model. A key challenge in this process is over-unlearning, where the model's performance on the remaining data significantly drops due to the change in the model's parameters. Existing unlearning algorithms depend on the remaining data to prevent this issue. As such, these methods are inapplicable in a more practical scenario, where only the unlearning samples are available (i.e., zero-shot unlearning). This paper presents a novel framework, ZS-PAG, to fill this gap. Our approach offers three key innovations: (1) we approximate the inaccessible remaining data by generating adversarial samples; (2) leveraging the generated samples, we pinpoint a specific subspace to perform the unlearning process, therefore preventing over-unlearning in the challenging zero-shot scenario; and (3) we consider the influence of the unlearning process on the remaining samples and design an influence-based pseudo-labeling strategy. As a result, our method further improves the model's performance after unlearning. The proposed method holds a theoretical guarantee, and experiments on various benchmarks validate the effectiveness and superiority of our proposed method over several baselines.

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机器去学习 ZS-PAG框架 对抗样本 伪标签
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