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Gradient-Leakage Resilient Federated Learning

Gradient-Leakage Resilient Federated Learning

2 July 2021
Wenqi Wei
Ling Liu
Yanzhao Wu
Gong Su
Arun Iyengar
    FedML
ArXivPDFHTML

Papers citing "Gradient-Leakage Resilient Federated Learning"

34 / 34 papers shown
Title
Improving Efficiency in Federated Learning with Optimized Homomorphic Encryption
Improving Efficiency in Federated Learning with Optimized Homomorphic Encryption
Feiran Yang
FedML
55
0
0
03 Apr 2025
Towards Resilient Federated Learning in CyberEdge Networks: Recent Advances and Future Trends
Towards Resilient Federated Learning in CyberEdge Networks: Recent Advances and Future Trends
Kai Li
Zhengyang Zhang
Azadeh Pourkabirian
Wei Ni
Falko Dressler
Ozgur B. Akan
48
0
0
01 Apr 2025
CENSOR: Defense Against Gradient Inversion via Orthogonal Subspace Bayesian Sampling
Kaiyuan Zhang
Siyuan Cheng
Guangyu Shen
Bruno Ribeiro
Shengwei An
Pin-Yu Chen
X. Zhang
Ninghui Li
90
1
0
28 Jan 2025
Fed-AugMix: Balancing Privacy and Utility via Data Augmentation
Fed-AugMix: Balancing Privacy and Utility via Data Augmentation
HaoYang Li
Wei Chen
Xiaojin Zhang
FedML
68
0
0
18 Dec 2024
Gradients Stand-in for Defending Deep Leakage in Federated Learning
Gradients Stand-in for Defending Deep Leakage in Federated Learning
H. Yi
H. Ren
C. Hu
Y. Li
J. Deng
Xin Xie
FedML
25
0
0
11 Oct 2024
In-depth Analysis of Privacy Threats in Federated Learning for Medical
  Data
In-depth Analysis of Privacy Threats in Federated Learning for Medical Data
B. Das
M. H. Amini
Yanzhao Wu
29
0
0
27 Sep 2024
Data Poisoning and Leakage Analysis in Federated Learning
Data Poisoning and Leakage Analysis in Federated Learning
Wenqi Wei
Tiansheng Huang
Zachary Yahn
Anoop Singhal
Margaret Loper
Ling Liu
FedML
SILM
23
0
0
19 Sep 2024
Mjolnir: Breaking the Shield of Perturbation-Protected Gradients via Adaptive Diffusion
Mjolnir: Breaking the Shield of Perturbation-Protected Gradients via Adaptive Diffusion
Xuan Liu
Siqi Cai
Qihua Zhou
Song Guo
Ruibin Li
Kaiwei Lin
DiffM
AAML
24
1
0
07 Jul 2024
Robust Federated Learning Mitigates Client-side Training Data
  Distribution Inference Attacks
Robust Federated Learning Mitigates Client-side Training Data Distribution Inference Attacks
Yichang Xu
Ming Yin
Minghong Fang
Neil Zhenqiang Gong
OOD
FedML
36
6
0
05 Mar 2024
Trustworthy Distributed AI Systems: Robustness, Privacy, and Governance
Trustworthy Distributed AI Systems: Robustness, Privacy, and Governance
Wenqi Wei
Ling Liu
23
16
0
02 Feb 2024
A Survey on Vulnerability of Federated Learning: A Learning Algorithm
  Perspective
A Survey on Vulnerability of Federated Learning: A Learning Algorithm Perspective
Xianghua Xie
Chen Hu
Hanchi Ren
Jingjing Deng
FedML
AAML
29
19
0
27 Nov 2023
Privacy Risks Analysis and Mitigation in Federated Learning for Medical
  Images
Privacy Risks Analysis and Mitigation in Federated Learning for Medical Images
B. Das
M. H. Amini
Yanzhao Wu
23
7
0
11 Nov 2023
PA-iMFL: Communication-Efficient Privacy Amplification Method against
  Data Reconstruction Attack in Improved Multi-Layer Federated Learning
PA-iMFL: Communication-Efficient Privacy Amplification Method against Data Reconstruction Attack in Improved Multi-Layer Federated Learning
Jianhua Wang
Xiaolin Chang
Jelena Mivsić
Vojislav B. Mivsić
Zhi Chen
Junchao Fan
39
2
0
25 Sep 2023
Understanding Deep Gradient Leakage via Inversion Influence Functions
Understanding Deep Gradient Leakage via Inversion Influence Functions
Haobo Zhang
Junyuan Hong
Yuyang Deng
M. Mahdavi
Jiayu Zhou
FedML
53
6
0
22 Sep 2023
RAI4IoE: Responsible AI for Enabling the Internet of Energy
RAI4IoE: Responsible AI for Enabling the Internet of Energy
Minhui Xue
Surya Nepal
Ling Liu
Subbu Sethuvenkatraman
Xingliang Yuan
Carsten Rudolph
Ruoxi Sun
Greg Eisenhauer
21
4
0
20 Sep 2023
A Survey of What to Share in Federated Learning: Perspectives on Model
  Utility, Privacy Leakage, and Communication Efficiency
A Survey of What to Share in Federated Learning: Perspectives on Model Utility, Privacy Leakage, and Communication Efficiency
Jiawei Shao
Zijian Li
Wenqiang Sun
Tailin Zhou
Yuchang Sun
Lumin Liu
Zehong Lin
Yuyi Mao
Jun Zhang
FedML
30
23
0
20 Jul 2023
Towards Open Federated Learning Platforms: Survey and Vision from
  Technical and Legal Perspectives
Towards Open Federated Learning Platforms: Survey and Vision from Technical and Legal Perspectives
Moming Duan
Qinbin Li
Linshan Jiang
Bingsheng He
FedML
26
4
0
05 Jul 2023
Theoretically Principled Federated Learning for Balancing Privacy and
  Utility
Theoretically Principled Federated Learning for Balancing Privacy and Utility
Xiaojin Zhang
Wenjie Li
Kai Chen
Shutao Xia
Qian Yang
FedML
9
9
0
24 May 2023
Securing Distributed SGD against Gradient Leakage Threats
Securing Distributed SGD against Gradient Leakage Threats
Wenqi Wei
Ling Liu
Jingya Zhou
Ka-Ho Chow
Yanzhao Wu
FedML
16
18
0
10 May 2023
Gradient Leakage Defense with Key-Lock Module for Federated Learning
Gradient Leakage Defense with Key-Lock Module for Federated Learning
Hanchi Ren
Jingjing Deng
Xianghua Xie
Xiaoke Ma
J. Ma
FedML
15
2
0
06 May 2023
RecUP-FL: Reconciling Utility and Privacy in Federated Learning via
  User-configurable Privacy Defense
RecUP-FL: Reconciling Utility and Privacy in Federated Learning via User-configurable Privacy Defense
Yue-li Cui
Syed Imran Ali Meerza
Zhuohang Li
Luyang Liu
Jiaxin Zhang
Jian-Dong Liu
AAML
FedML
21
4
0
11 Apr 2023
CATFL: Certificateless Authentication-based Trustworthy Federated
  Learning for 6G Semantic Communications
CATFL: Certificateless Authentication-based Trustworthy Federated Learning for 6G Semantic Communications
Gaolei Li
Yuanyuan Zhao
Yi Li
11
13
0
01 Feb 2023
Social-Aware Clustered Federated Learning with Customized Privacy
  Preservation
Social-Aware Clustered Federated Learning with Customized Privacy Preservation
Yuntao Wang
Zhou Su
Yanghe Pan
Tom H. Luan
Ruidong Li
Shui Yu
FedML
20
17
0
25 Dec 2022
Refiner: Data Refining against Gradient Leakage Attacks in Federated
  Learning
Refiner: Data Refining against Gradient Leakage Attacks in Federated Learning
Mingyuan Fan
Cen Chen
Chengyu Wang
Ximeng Liu
Wenmeng Zhou
Jun Huang
AAML
FedML
32
0
0
05 Dec 2022
Flow: Per-Instance Personalized Federated Learning Through Dynamic
  Routing
Flow: Per-Instance Personalized Federated Learning Through Dynamic Routing
Kunjal Panchal
Sunav Choudhary
Nisarg Parikh
Lijun Zhang
Hui Guan
26
5
0
28 Nov 2022
Mixed Precision Quantization to Tackle Gradient Leakage Attacks in
  Federated Learning
Mixed Precision Quantization to Tackle Gradient Leakage Attacks in Federated Learning
Pretom Roy Ovi
Emon Dey
Nirmalya Roy
A. Gangopadhyay
FedML
18
4
0
22 Oct 2022
Concealing Sensitive Samples against Gradient Leakage in Federated
  Learning
Concealing Sensitive Samples against Gradient Leakage in Federated Learning
Jing Wu
Munawar Hayat
Min Zhou
Mehrtash Harandi
FedML
11
9
0
13 Sep 2022
A Survey on Gradient Inversion: Attacks, Defenses and Future Directions
A Survey on Gradient Inversion: Attacks, Defenses and Future Directions
Rui Zhang
Song Guo
Junxiao Wang
Xin Xie
Dacheng Tao
27
36
0
15 Jun 2022
Gradient Obfuscation Gives a False Sense of Security in Federated
  Learning
Gradient Obfuscation Gives a False Sense of Security in Federated Learning
Kai Yue
Richeng Jin
Chau-Wai Wong
D. Baron
H. Dai
FedML
26
46
0
08 Jun 2022
Auditing Privacy Defenses in Federated Learning via Generative Gradient
  Leakage
Auditing Privacy Defenses in Federated Learning via Generative Gradient Leakage
Zhuohang Li
Jiaxin Zhang
Lu Liu
Jian-Dong Liu
FedML
16
114
0
29 Mar 2022
Survey on Federated Learning Threats: concepts, taxonomy on attacks and
  defences, experimental study and challenges
Survey on Federated Learning Threats: concepts, taxonomy on attacks and defences, experimental study and challenges
Nuria Rodríguez-Barroso
Daniel Jiménez López
M. V. Luzón
Francisco Herrera
Eugenio Martínez-Cámara
FedML
29
211
0
20 Jan 2022
Robust and Privacy-Preserving Collaborative Learning: A Comprehensive
  Survey
Robust and Privacy-Preserving Collaborative Learning: A Comprehensive Survey
Shangwei Guo
Xu Zhang
Feiyu Yang
Tianwei Zhang
Yan Gan
Tao Xiang
Yang Liu
FedML
18
9
0
19 Dec 2021
Bayesian Framework for Gradient Leakage
Bayesian Framework for Gradient Leakage
Mislav Balunović
Dimitar I. Dimitrov
Robin Staab
Martin Vechev
FedML
14
41
0
08 Nov 2021
Mechanism Design in Large Games: Incentives and Privacy
Michael Kearns
Mallesh M. Pai
Aaron Roth
Jonathan R. Ullman
80
182
0
17 Jul 2012
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