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Don't Forget Too Much: Towards Machine Unlearning on Feature Level

Don't Forget Too Much: Towards Machine Unlearning on Feature Level

16 June 2024
Heng Xu
Tianqing Zhu
Wanlei Zhou
Wei Zhao
    MU
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Papers citing "Don't Forget Too Much: Towards Machine Unlearning on Feature Level"

5 / 5 papers shown
Title
SUV: Scalable Large Language Model Copyright Compliance with Regularized Selective Unlearning
SUV: Scalable Large Language Model Copyright Compliance with Regularized Selective Unlearning
Tianyang Xu
Xiaoze Liu
Feijie Wu
Xiaoqian Wang
Jing Gao
MU
56
0
0
29 Mar 2025
Safe and Reliable Diffusion Models via Subspace Projection
Safe and Reliable Diffusion Models via Subspace Projection
Huiqiang Chen
Tianqing Zhu
Linlin Wang
Xin Yu
Longxiang Gao
Wanlei Zhou
DiffM
58
2
0
21 Mar 2025
Game-Theoretic Machine Unlearning: Mitigating Extra Privacy Leakage
Game-Theoretic Machine Unlearning: Mitigating Extra Privacy Leakage
Hengzhu Liu
Tianqing Zhu
Lefeng Zhang
Ping Xiong
MU
39
0
0
06 Nov 2024
Zero-shot Class Unlearning via Layer-wise Relevance Analysis and
  Neuronal Path Perturbation
Zero-shot Class Unlearning via Layer-wise Relevance Analysis and Neuronal Path Perturbation
Wenhan Chang
Tianqing Zhu
Yufeng Wu
Wanlei Zhou
MU
21
0
0
31 Oct 2024
Machine Unlearning: Linear Filtration for Logit-based Classifiers
Machine Unlearning: Linear Filtration for Logit-based Classifiers
Thomas Baumhauer
Pascal Schöttle
Matthias Zeppelzauer
MU
107
130
0
07 Feb 2020
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