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Membership Inference Attacks on Deep Regression Models for Neuroimaging

Membership Inference Attacks on Deep Regression Models for Neuroimaging

6 May 2021
Umang Gupta
Dmitris Stripelis
Pradeep Lam
Paul M. Thompson
J. Ambite
Greg Ver Steeg
    MIACV
    FedML
ArXivPDFHTML

Papers citing "Membership Inference Attacks on Deep Regression Models for Neuroimaging"

20 / 20 papers shown
Title
Generating Synthetic Data with Formal Privacy Guarantees: State of the Art and the Road Ahead
Generating Synthetic Data with Formal Privacy Guarantees: State of the Art and the Road Ahead
Viktor Schlegel
Anil A Bharath
Zilong Zhao
Kevin Yee
66
0
0
26 Mar 2025
Membership Inference Risks in Quantized Models: A Theoretical and Empirical Study
Eric Aubinais
Philippe Formont
Pablo Piantanida
Elisabeth Gassiat
38
0
0
10 Feb 2025
Membership Inference Attacks and Defenses in Federated Learning: A
  Survey
Membership Inference Attacks and Defenses in Federated Learning: A Survey
Li Bai
Haibo Hu
Qingqing Ye
Haoyang Li
Leixia Wang
Jianliang Xu
FedML
69
13
0
09 Dec 2024
Inference Attacks: A Taxonomy, Survey, and Promising Directions
Inference Attacks: A Taxonomy, Survey, and Promising Directions
Feng Wu
Lei Cui
Shaowen Yao
Shui Yu
36
2
0
04 Jun 2024
Privacy Threats in Stable Diffusion Models
Privacy Threats in Stable Diffusion Models
Thomas Cilloni
Charles Fleming
Charles Walter
17
3
0
15 Nov 2023
Fundamental Limits of Membership Inference Attacks on Machine Learning Models
Fundamental Limits of Membership Inference Attacks on Machine Learning Models
Eric Aubinais
Elisabeth Gassiat
Pablo Piantanida
MIACV
43
2
0
20 Oct 2023
Federated Learning over Harmonized Data Silos
Federated Learning over Harmonized Data Silos
Dimitris Stripelis
J. Ambite
FedML
15
2
0
15 May 2023
Single-round Self-supervised Distributed Learning using Vision
  Transformer
Single-round Self-supervised Distributed Learning using Vision Transformer
Sangjoon Park
Ik-jae Lee
Jun Won Kim
Jong Chul Ye
FedML
MedIm
11
1
0
05 Jan 2023
Emerging Threats in Deep Learning-Based Autonomous Driving: A
  Comprehensive Survey
Emerging Threats in Deep Learning-Based Autonomous Driving: A Comprehensive Survey
Huiyun Cao
Wenlong Zou
Yinkun Wang
Ting Song
Mengjun Liu
AAML
35
4
0
19 Oct 2022
Towards Sparsified Federated Neuroimaging Models via Weight Pruning
Towards Sparsified Federated Neuroimaging Models via Weight Pruning
Dimitris Stripelis
Umang Gupta
Nikhil J. Dhinagar
Greg Ver Steeg
Paul M. Thompson
J. Ambite
FedML
19
0
0
24 Aug 2022
Recovering Private Text in Federated Learning of Language Models
Recovering Private Text in Federated Learning of Language Models
Samyak Gupta
Yangsibo Huang
Zexuan Zhong
Tianyu Gao
Kai Li
Danqi Chen
FedML
25
74
0
17 May 2022
Secure & Private Federated Neuroimaging
Secure & Private Federated Neuroimaging
Dimitris Stripelis
Umang Gupta
Hamza Saleem
Nikhil J. Dhinagar
Tanmay Ghai
...
Greg Ver Steeg
Srivatsan Ravi
Muhammad Naveed
Paul M. Thompson
J. Ambite
FedML
OOD
11
2
0
11 May 2022
Multi-Task Distributed Learning using Vision Transformer with Random
  Patch Permutation
Multi-Task Distributed Learning using Vision Transformer with Random Patch Permutation
Sangjoon Park
Jong Chul Ye
FedML
MedIm
20
19
0
07 Apr 2022
Adaptive Differentially Private Empirical Risk Minimization
Adaptive Differentially Private Empirical Risk Minimization
Xiaoxia Wu
Lingxiao Wang
Irina Cristali
Quanquan Gu
Rebecca Willett
15
6
0
14 Oct 2021
Information-theoretic generalization bounds for black-box learning
  algorithms
Information-theoretic generalization bounds for black-box learning algorithms
Hrayr Harutyunyan
Maxim Raginsky
Greg Ver Steeg
Aram Galstyan
32
41
0
04 Oct 2021
Secure Neuroimaging Analysis using Federated Learning with Homomorphic
  Encryption
Secure Neuroimaging Analysis using Federated Learning with Homomorphic Encryption
Dimitris Stripelis
Hamza Saleem
Tanmay Ghai
Nikhil J. Dhinagar
Umang Gupta
...
Greg Ver Steeg
Srivatsan Ravi
Muhammad Naveed
Paul M. Thompson
J. Ambite
FedML
44
53
0
07 Aug 2021
Membership Inference Attacks on Machine Learning: A Survey
Membership Inference Attacks on Machine Learning: A Survey
Hongsheng Hu
Z. Salcic
Lichao Sun
Gillian Dobbie
Philip S. Yu
Xuyun Zhang
MIACV
28
408
0
14 Mar 2021
Scaling Neuroscience Research using Federated Learning
Scaling Neuroscience Research using Federated Learning
Dimitris Stripelis
J. Ambite
Pradeep Lam
Paul M. Thompson
FedML
37
28
0
16 Feb 2021
Systematic Evaluation of Privacy Risks of Machine Learning Models
Systematic Evaluation of Privacy Risks of Machine Learning Models
Liwei Song
Prateek Mittal
MIACV
185
358
0
24 Mar 2020
The Future of Digital Health with Federated Learning
The Future of Digital Health with Federated Learning
Nicola Rieke
Jonny Hancox
Wenqi Li
Fausto Milletari
H. Roth
...
Ronald M. Summers
Andrew Trask
Daguang Xu
Maximilian Baust
M. Jorge Cardoso
OOD
174
1,698
0
18 Mar 2020
1