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Synthetic data shuffling accelerates the convergence of federated
  learning under data heterogeneity
v1v2 (latest)

Synthetic data shuffling accelerates the convergence of federated learning under data heterogeneity

23 June 2023
Yue Liu
Yasin Esfandiari
Mikkel N. Schmidt
T. S. Alstrøm
Sebastian U. Stich
    FedML
ArXiv (abs)PDFHTML

Papers citing "Synthetic data shuffling accelerates the convergence of federated learning under data heterogeneity"

30 / 30 papers shown
Title
On the effectiveness of partial variance reduction in federated learning
  with heterogeneous data
On the effectiveness of partial variance reduction in federated learning with heterogeneous data
Yue Liu
Mikkel N. Schmidt
T. S. Alstrøm
Sebastian U. Stich
FedML
72
9
0
05 Dec 2022
Federated Learning with GAN-based Data Synthesis for Non-IID Clients
Federated Learning with GAN-based Data Synthesis for Non-IID Clients
Zijian Li
Jiawei Shao
Yuyi Mao
Jessie Hui Wang
Jinchao Zhang
FedML
82
40
0
11 Jun 2022
On the Unreasonable Effectiveness of Federated Averaging with
  Heterogeneous Data
On the Unreasonable Effectiveness of Federated Averaging with Heterogeneous Data
Jianyu Wang
Rudrajit Das
Gauri Joshi
Satyen Kale
Zheng Xu
Tong Zhang
FedML
82
40
0
09 Jun 2022
FedAvg with Fine Tuning: Local Updates Lead to Representation Learning
FedAvg with Fine Tuning: Local Updates Lead to Representation Learning
Liam Collins
Hamed Hassani
Aryan Mokhtari
Sanjay Shakkottai
FedML
70
78
0
27 May 2022
Federated Learning Based on Dynamic Regularization
Federated Learning Based on Dynamic Regularization
D. A. E. Acar
Yue Zhao
Ramon Matas Navarro
Matthew Mattina
P. Whatmough
Venkatesh Saligrama
FedML
71
776
0
08 Nov 2021
A Field Guide to Federated Optimization
A Field Guide to Federated Optimization
Jianyu Wang
Zachary B. Charles
Zheng Xu
Gauri Joshi
H. B. McMahan
...
Mi Zhang
Tong Zhang
Chunxiang Zheng
Chen Zhu
Wennan Zhu
FedML
273
419
0
14 Jul 2021
FedMix: Approximation of Mixup under Mean Augmented Federated Learning
FedMix: Approximation of Mixup under Mean Augmented Federated Learning
Tehrim Yoon
Sumin Shin
Sung Ju Hwang
Eunho Yang
FedML
68
171
0
01 Jul 2021
On Large-Cohort Training for Federated Learning
On Large-Cohort Training for Federated Learning
Zachary B. Charles
Zachary Garrett
Zhouyuan Huo
Sergei Shmulyian
Virginia Smith
FedML
66
112
0
15 Jun 2021
No Fear of Heterogeneity: Classifier Calibration for Federated Learning
  with Non-IID Data
No Fear of Heterogeneity: Classifier Calibration for Federated Learning with Non-IID Data
Mi Luo
Fei Chen
Dapeng Hu
Yifan Zhang
Jian Liang
Jiashi Feng
FedML
83
340
0
09 Jun 2021
Data-Free Knowledge Distillation for Heterogeneous Federated Learning
Data-Free Knowledge Distillation for Heterogeneous Federated Learning
Zhuangdi Zhu
Junyuan Hong
Jiayu Zhou
FedML
80
659
0
20 May 2021
Robust Learning Meets Generative Models: Can Proxy Distributions Improve
  Adversarial Robustness?
Robust Learning Meets Generative Models: Can Proxy Distributions Improve Adversarial Robustness?
Vikash Sehwag
Saeed Mahloujifar
Tinashe Handina
Sihui Dai
Chong Xiang
M. Chiang
Prateek Mittal
OOD
85
130
0
19 Apr 2021
Linear Convergence in Federated Learning: Tackling Client Heterogeneity
  and Sparse Gradients
Linear Convergence in Federated Learning: Tackling Client Heterogeneity and Sparse Gradients
A. Mitra
Rayana H. Jaafar
George J. Pappas
Hamed Hassani
FedML
101
159
0
14 Feb 2021
Negative Data Augmentation
Negative Data Augmentation
Abhishek Sinha
Kumar Ayush
Jiaming Song
Burak Uzkent
Hongxia Jin
Stefano Ermon
78
75
0
09 Feb 2021
Mime: Mimicking Centralized Stochastic Algorithms in Federated Learning
Mime: Mimicking Centralized Stochastic Algorithms in Federated Learning
Sai Praneeth Karimireddy
Martin Jaggi
Satyen Kale
M. Mohri
Sashank J. Reddi
Sebastian U. Stich
A. Suresh
FedML
133
217
0
08 Aug 2020
Tackling the Objective Inconsistency Problem in Heterogeneous Federated
  Optimization
Tackling the Objective Inconsistency Problem in Heterogeneous Federated Optimization
Jianyu Wang
Qinghua Liu
Hao Liang
Gauri Joshi
H. Vincent Poor
MoMeFedML
68
1,337
0
15 Jul 2020
Differentiable Augmentation for Data-Efficient GAN Training
Differentiable Augmentation for Data-Efficient GAN Training
Shengyu Zhao
Zhijian Liu
Ji Lin
Jun-Yan Zhu
Song Han
91
608
0
18 Jun 2020
GS-WGAN: A Gradient-Sanitized Approach for Learning Differentially
  Private Generators
GS-WGAN: A Gradient-Sanitized Approach for Learning Differentially Private Generators
Dingfan Chen
Tribhuvanesh Orekondy
Mario Fritz
SyDa
56
185
0
15 Jun 2020
Training Generative Adversarial Networks with Limited Data
Training Generative Adversarial Networks with Limited Data
Tero Karras
M. Aittala
Janne Hellsten
S. Laine
J. Lehtinen
Timo Aila
GAN
161
1,886
0
11 Jun 2020
A Unified Theory of Decentralized SGD with Changing Topology and Local
  Updates
A Unified Theory of Decentralized SGD with Changing Topology and Local Updates
Anastasia Koloskova
Nicolas Loizou
Sadra Boreiri
Martin Jaggi
Sebastian U. Stich
FedML
85
506
0
23 Mar 2020
Adaptive Federated Optimization
Adaptive Federated Optimization
Sashank J. Reddi
Zachary B. Charles
Manzil Zaheer
Zachary Garrett
Keith Rush
Jakub Konecný
Sanjiv Kumar
H. B. McMahan
FedML
179
1,437
0
29 Feb 2020
Acceleration for Compressed Gradient Descent in Distributed and
  Federated Optimization
Acceleration for Compressed Gradient Descent in Distributed and Federated Optimization
Zhize Li
D. Kovalev
Xun Qian
Peter Richtárik
FedMLAI4CE
104
137
0
26 Feb 2020
Advances and Open Problems in Federated Learning
Advances and Open Problems in Federated Learning
Peter Kairouz
H. B. McMahan
Brendan Avent
A. Bellet
M. Bennis
...
Zheng Xu
Qiang Yang
Felix X. Yu
Han Yu
Sen Zhao
FedMLAI4CE
259
6,261
0
10 Dec 2019
Tighter Theory for Local SGD on Identical and Heterogeneous Data
Tighter Theory for Local SGD on Identical and Heterogeneous Data
Ahmed Khaled
Konstantin Mishchenko
Peter Richtárik
74
433
0
10 Sep 2019
Unified Optimal Analysis of the (Stochastic) Gradient Method
Unified Optimal Analysis of the (Stochastic) Gradient Method
Sebastian U. Stich
54
113
0
09 Jul 2019
Differentially Private Generative Adversarial Network
Differentially Private Generative Adversarial Network
Liyang Xie
Kaixiang Lin
Shu Wang
Fei Wang
Jiayu Zhou
SyDa
90
500
0
19 Feb 2018
Learning from Simulated and Unsupervised Images through Adversarial
  Training
Learning from Simulated and Unsupervised Images through Adversarial Training
A. Shrivastava
Tomas Pfister
Oncel Tuzel
J. Susskind
Wenda Wang
Russ Webb
GAN
103
1,801
0
22 Dec 2016
Federated Optimization: Distributed Machine Learning for On-Device
  Intelligence
Federated Optimization: Distributed Machine Learning for On-Device Intelligence
Jakub Konecný
H. B. McMahan
Daniel Ramage
Peter Richtárik
FedML
140
1,899
0
08 Oct 2016
Deep Learning with Differential Privacy
Deep Learning with Differential Privacy
Martín Abadi
Andy Chu
Ian Goodfellow
H. B. McMahan
Ilya Mironov
Kunal Talwar
Li Zhang
FedMLSyDa
216
6,130
0
01 Jul 2016
Improved Techniques for Training GANs
Improved Techniques for Training GANs
Tim Salimans
Ian Goodfellow
Wojciech Zaremba
Vicki Cheung
Alec Radford
Xi Chen
GAN
483
9,052
0
10 Jun 2016
Communication-Efficient Learning of Deep Networks from Decentralized
  Data
Communication-Efficient Learning of Deep Networks from Decentralized Data
H. B. McMahan
Eider Moore
Daniel Ramage
S. Hampson
Blaise Agüera y Arcas
FedML
406
17,486
0
17 Feb 2016
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