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Exploiting Defenses against GAN-Based Feature Inference Attacks in Federated Learning

Exploiting Defenses against GAN-Based Feature Inference Attacks in Federated Learning

27 April 2020
Xinjian Luo
Xiangqi Zhu
    FedML
ArXivPDFHTML

Papers citing "Exploiting Defenses against GAN-Based Feature Inference Attacks in Federated Learning"

8 / 8 papers shown
Title
Trustworthy Federated Learning: Privacy, Security, and Beyond
Trustworthy Federated Learning: Privacy, Security, and Beyond
Chunlu Chen
Ji Liu
Haowen Tan
Xingjian Li
Kevin I-Kai Wang
Peng Li
Kouichi Sakurai
Dejing Dou
FedML
28
1
0
03 Nov 2024
Federated Learning: Attacks, Defenses, Opportunities, and Challenges
Federated Learning: Attacks, Defenses, Opportunities, and Challenges
Ghazaleh Shirvani
Saeid Ghasemshirazi
Behzad Beigzadeh
FedML
24
3
0
10 Mar 2024
Expressive variational quantum circuits provide inherent privacy in
  federated learning
Expressive variational quantum circuits provide inherent privacy in federated learning
Niraj Kumar
Jamie Heredge
Changhao Li
Shaltiel Eloul
Shree Hari Sureshbabu
Marco Pistoia
FedML
20
8
0
22 Sep 2023
Mitigating Cross-client GANs-based Attack in Federated Learning
Mitigating Cross-client GANs-based Attack in Federated Learning
Hong Huang
Xinyu Lei
Tao Xiang
AAML
11
1
0
25 Jul 2023
On the Security & Privacy in Federated Learning
On the Security & Privacy in Federated Learning
Gorka Abad
S. Picek
Víctor Julio Ramírez-Durán
A. Urbieta
14
11
0
10 Dec 2021
A Fusion-Denoising Attack on InstaHide with Data Augmentation
A Fusion-Denoising Attack on InstaHide with Data Augmentation
Xinjian Luo
X. Xiao
Yuncheng Wu
Juncheng Liu
Beng Chin Ooi
FedML
PICV
14
7
0
17 May 2021
From Distributed Machine Learning to Federated Learning: A Survey
From Distributed Machine Learning to Federated Learning: A Survey
Ji Liu
Jizhou Huang
Yang Zhou
Xuhong Li
Shilei Ji
Haoyi Xiong
Dejing Dou
FedML
OOD
18
236
0
29 Apr 2021
Constructing Unrestricted Adversarial Examples with Generative Models
Constructing Unrestricted Adversarial Examples with Generative Models
Yang Song
Rui Shu
Nate Kushman
Stefano Ermon
GAN
AAML
147
276
0
21 May 2018
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