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DP-ADMM: ADMM-based Distributed Learning with Differential Privacy

DP-ADMM: ADMM-based Distributed Learning with Differential Privacy

30 August 2018
Zonghao Huang
Rui Hu
Yuanxiong Guo
Eric Chan-Tin
Yanmin Gong
    FedML
ArXivPDFHTML

Papers citing "DP-ADMM: ADMM-based Distributed Learning with Differential Privacy"

50 / 69 papers shown
Title
A Linearized Alternating Direction Multiplier Method for Federated Matrix Completion Problems
A Linearized Alternating Direction Multiplier Method for Federated Matrix Completion Problems
Patrick Hytla
Tran T. A. Nghia
Duy Nhat Phan
Andrew Rice
FedML
52
0
0
17 Mar 2025
Towards Trustworthy Federated Learning
Alina Basharat
Yijun Bian
Ping Xu
Z. Tian
FedML
72
0
0
05 Mar 2025
Private and Federated Stochastic Convex Optimization: Efficient
  Strategies for Centralized Systems
Private and Federated Stochastic Convex Optimization: Efficient Strategies for Centralized Systems
Roie Reshef
Kfir Y. Levy
FedML
42
0
0
17 Jul 2024
The Privacy Power of Correlated Noise in Decentralized Learning
The Privacy Power of Correlated Noise in Decentralized Learning
Youssef Allouah
Anastasia Koloskova
Aymane El Firdoussi
Martin Jaggi
R. Guerraoui
41
4
0
02 May 2024
Privacy-Preserving Distributed Optimization and Learning
Privacy-Preserving Distributed Optimization and Learning
Ziqin Chen
Yongqiang Wang
35
2
0
29 Feb 2024
Private Fine-tuning of Large Language Models with Zeroth-order Optimization
Private Fine-tuning of Large Language Models with Zeroth-order Optimization
Xinyu Tang
Ashwinee Panda
Milad Nasr
Saeed Mahloujifar
Prateek Mittal
50
18
0
09 Jan 2024
Privacy Amplification by Iteration for ADMM with (Strongly) Convex
  Objective Functions
Privacy Amplification by Iteration for ADMM with (Strongly) Convex Objective Functions
T.-H. Hubert Chan
Hao Xie
Mengshi Zhao
49
1
0
14 Dec 2023
Topology-Dependent Privacy Bound For Decentralized Federated Learning
Topology-Dependent Privacy Bound For Decentralized Federated Learning
Qiongxiu Li
Wenrui Yu
Changlong Ji
Richard Heusdens
37
3
0
13 Dec 2023
Privacy-preserving Federated Primal-dual Learning for Non-convex and
  Non-smooth Problems with Model Sparsification
Privacy-preserving Federated Primal-dual Learning for Non-convex and Non-smooth Problems with Model Sparsification
Yiwei Li
Chien-Wei Huang
Shuai Wang
Chong-Yung Chi
Tony Q.S. Quek
FedML
35
1
0
30 Oct 2023
DPZero: Private Fine-Tuning of Language Models without Backpropagation
DPZero: Private Fine-Tuning of Language Models without Backpropagation
Liang Zhang
Bingcong Li
K. K. Thekumparampil
Sewoong Oh
Niao He
33
11
0
14 Oct 2023
FedFed: Feature Distillation against Data Heterogeneity in Federated
  Learning
FedFed: Feature Distillation against Data Heterogeneity in Federated Learning
Zhiqin Yang
Yonggang Zhang
Yuxiang Zheng
Xinmei Tian
Hao Peng
Tongliang Liu
Bo Han
FedML
35
62
0
08 Oct 2023
On the Tradeoff between Privacy Preservation and Byzantine-Robustness in
  Decentralized Learning
On the Tradeoff between Privacy Preservation and Byzantine-Robustness in Decentralized Learning
Haoxiang Ye
He Zhu
Qing Ling
FedML
46
11
0
28 Aug 2023
Locally Differentially Private Distributed Online Learning with
  Guaranteed Optimality
Locally Differentially Private Distributed Online Learning with Guaranteed Optimality
Ziqin Chen
Yongqiang Wang
39
4
0
25 Jun 2023
Private Networked Federated Learning for Nonsmooth Objectives
Private Networked Federated Learning for Nonsmooth Objectives
Franccois Gauthier
C. Gratton
Naveen K. D. Venkategowda
Stefan Werner
FedML
22
0
0
24 Jun 2023
Distributed and Scalable Optimization for Robust Proton Treatment
  Planning
Distributed and Scalable Optimization for Robust Proton Treatment Planning
A. Fu
V. Taasti
M. Zarepisheh
24
2
0
27 Apr 2023
Mobilizing Personalized Federated Learning in Infrastructure-Less and
  Heterogeneous Environments via Random Walk Stochastic ADMM
Mobilizing Personalized Federated Learning in Infrastructure-Less and Heterogeneous Environments via Random Walk Stochastic ADMM
Ziba Parsons
Fei Dou
Houyi Du
Zheng Song
Jin Lu
32
3
0
25 Apr 2023
Differentially Private Distributed Convex Optimization
Differentially Private Distributed Convex Optimization
Minseok Ryu
Kibaek Kim
FedML
35
1
0
28 Feb 2023
From Noisy Fixed-Point Iterations to Private ADMM for Centralized and
  Federated Learning
From Noisy Fixed-Point Iterations to Private ADMM for Centralized and Federated Learning
Edwige Cyffers
A. Bellet
D. Basu
FedML
39
5
0
24 Feb 2023
DIFF2: Differential Private Optimization via Gradient Differences for
  Nonconvex Distributed Learning
DIFF2: Differential Private Optimization via Gradient Differences for Nonconvex Distributed Learning
Tomoya Murata
Taiji Suzuki
35
9
0
08 Feb 2023
Differentially Private Decentralized Optimization with Relay
  Communication
Differentially Private Decentralized Optimization with Relay Communication
Luqing Wang
Luyao Guo
Shaofu Yang
Xinli Shi
38
0
0
21 Dec 2022
Differentially Private ADMM-Based Distributed Discrete Optimal Transport
  for Resource Allocation
Differentially Private ADMM-Based Distributed Discrete Optimal Transport for Resource Allocation
Jason Hughes
Juntao Chen
OT
21
1
0
30 Nov 2022
Synthetic Dataset Generation for Privacy-Preserving Machine Learning
Synthetic Dataset Generation for Privacy-Preserving Machine Learning
Efstathia Soufleri
Gobinda Saha
Kaushik Roy
DD
29
2
0
06 Oct 2022
Federated Coordinate Descent for Privacy-Preserving Multiparty Linear
  Regression
Federated Coordinate Descent for Privacy-Preserving Multiparty Linear Regression
Xinlin Leng
Chenxu Li
Weifeng Xu
Yuyan Sun
Hongtao Wang
FedML
32
1
0
16 Sep 2022
Exact Penalty Method for Federated Learning
Exact Penalty Method for Federated Learning
Shenglong Zhou
Geoffrey Ye Li
FedML
38
0
0
23 Aug 2022
Improving Privacy-Preserving Vertical Federated Learning by Efficient
  Communication with ADMM
Improving Privacy-Preserving Vertical Federated Learning by Efficient Communication with ADMM
Chulin Xie
Pin-Yu Chen
Qinbin Li
Arash Nourian
Ce Zhang
Bo Li
FedML
47
16
0
20 Jul 2022
A Critical Review on the Use (and Misuse) of Differential Privacy in
  Machine Learning
A Critical Review on the Use (and Misuse) of Differential Privacy in Machine Learning
Alberto Blanco-Justicia
David Sánchez
J. Domingo-Ferrer
K. Muralidhar
11
59
0
09 Jun 2022
FedGiA: An Efficient Hybrid Algorithm for Federated Learning
FedGiA: An Efficient Hybrid Algorithm for Federated Learning
Shenglong Zhou
Geoffrey Ye Li
FedML
38
16
0
03 May 2022
Federated Stochastic Primal-dual Learning with Differential Privacy
Federated Stochastic Primal-dual Learning with Differential Privacy
Yiwei Li
Shuai Wang
Tsung-Hui Chang
Chong-Yung Chi
FedML
22
7
0
26 Apr 2022
Federated Learning via Inexact ADMM
Federated Learning via Inexact ADMM
Shenglong Zhou
Geoffrey Ye Li
FedML
26
59
0
22 Apr 2022
Private Non-Convex Federated Learning Without a Trusted Server
Private Non-Convex Federated Learning Without a Trusted Server
Andrew Lowy
Ali Ghafelebashi
Meisam Razaviyayn
FedML
38
25
0
13 Mar 2022
Trusted AI in Multi-agent Systems: An Overview of Privacy and Security
  for Distributed Learning
Trusted AI in Multi-agent Systems: An Overview of Privacy and Security for Distributed Learning
Chuan Ma
Jun Li
Kang Wei
Bo Liu
Ming Ding
Long Yuan
Zhu Han
H. Vincent Poor
64
43
0
18 Feb 2022
Federated Learning with Sparsified Model Perturbation: Improving
  Accuracy under Client-Level Differential Privacy
Federated Learning with Sparsified Model Perturbation: Improving Accuracy under Client-Level Differential Privacy
Rui Hu
Yanmin Gong
Yuanxiong Guo
FedML
32
65
0
15 Feb 2022
Efficient Privacy Preserving Logistic Regression for Horizontally
  Distributed Data
Efficient Privacy Preserving Logistic Regression for Horizontally Distributed Data
G. Miao
18
0
0
05 Feb 2022
HydraGAN A Multi-head, Multi-objective Approach to Synthetic Data
  Generation
HydraGAN A Multi-head, Multi-objective Approach to Synthetic Data Generation
Chance N. DeSmet
D. Cook
28
0
0
13 Nov 2021
Communication-Efficient ADMM-based Federated Learning
Communication-Efficient ADMM-based Federated Learning
Shenglong Zhou
Geoffrey Ye Li
FedML
40
22
0
28 Oct 2021
Canoe : A System for Collaborative Learning for Neural Nets
Canoe : A System for Collaborative Learning for Neural Nets
Harshit Daga
Yiwen Chen
Aastha Agrawal
Ada Gavrilovska
FedML
24
2
0
27 Aug 2021
Low-Latency Federated Learning over Wireless Channels with Differential
  Privacy
Low-Latency Federated Learning over Wireless Channels with Differential Privacy
Kang Wei
Jun Li
Chuan Ma
Ming Ding
Cailian Chen
Shi Jin
Zhu Han
H. Vincent Poor
FedML
40
73
0
20 Jun 2021
Differentially Private Federated Learning via Inexact ADMM
Differentially Private Federated Learning via Inexact ADMM
Minseok Ryu
Kibaek Kim
FedML
41
15
0
11 Jun 2021
Multi-Party Dual Learning
Multi-Party Dual Learning
Maoguo Gong
Yuan Gao
Yu Xie
A. K. Qin
Ke Pan
Yew-Soon Ong
14
9
0
14 Apr 2021
Fusion of Federated Learning and Industrial Internet of Things: A Survey
Fusion of Federated Learning and Industrial Internet of Things: A Survey
S. Priya
Praveen Kumar
Viet Quoc Pham
K. Dev
Reddy Maddikunta
Thippa Reddy
Thien Huynh-The
AI4CE
41
195
0
04 Jan 2021
Privacy-preserving Decentralized Aggregation for Federated Learning
Privacy-preserving Decentralized Aggregation for Federated Learning
Beomyeol Jeon
S. Ferdous
Muntasir Raihan Rahman
A. Walid
FedML
33
52
0
13 Dec 2020
Gradient Sparsification Can Improve Performance of
  Differentially-Private Convex Machine Learning
Gradient Sparsification Can Improve Performance of Differentially-Private Convex Machine Learning
F. Farokhi
33
4
0
30 Nov 2020
Toward Multiple Federated Learning Services Resource Sharing in Mobile
  Edge Networks
Toward Multiple Federated Learning Services Resource Sharing in Mobile Edge Networks
Minh N. H. Nguyen
N. H. Tran
Y. Tun
Zhu Han
Choong Seon Hong
FedML
27
49
0
25 Nov 2020
Differentially Private ADMM Algorithms for Machine Learning
Differentially Private ADMM Algorithms for Machine Learning
Tao Xu
Fanhua Shang
Yuanyuan Liu
Hongying Liu
Longjie Shen
Maoguo Gong
38
17
0
31 Oct 2020
Image Obfuscation for Privacy-Preserving Machine Learning
Image Obfuscation for Privacy-Preserving Machine Learning
Mathilde Raynal
R. Achanta
Mathias Humbert
43
13
0
20 Oct 2020
Latent Dirichlet Allocation Model Training with Differential Privacy
Latent Dirichlet Allocation Model Training with Differential Privacy
Fangyuan Zhao
Xuebin Ren
Shusen Yang
Qing Han
Peng Zhao
Xinyu Yang
35
28
0
09 Oct 2020
Connecting Distributed Pockets of EnergyFlexibility through Federated
  Computations:Limitations and Possibilities
Connecting Distributed Pockets of EnergyFlexibility through Federated Computations:Limitations and Possibilities
Javad Mohammadi
J. Thornburg
18
5
0
21 Sep 2020
Trading Data For Learning: Incentive Mechanism For On-Device Federated
  Learning
Trading Data For Learning: Incentive Mechanism For On-Device Federated Learning
Rui Hu
Yanmin Gong
FedML
28
63
0
11 Sep 2020
Towards Plausible Differentially Private ADMM Based Distributed Machine
  Learning
Towards Plausible Differentially Private ADMM Based Distributed Machine Learning
Jiahao Ding
Jingyi Wang
Guannan Liang
J. Bi
Miao Pan
17
12
0
11 Aug 2020
Federated Learning with Sparsification-Amplified Privacy and Adaptive
  Optimization
Federated Learning with Sparsification-Amplified Privacy and Adaptive Optimization
Rui Hu
Yanmin Gong
Yuanxiong Guo
FedML
34
55
0
01 Aug 2020
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