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A Unified and Refined Convergence Analysis for Non-Convex Decentralized
  Learning

A Unified and Refined Convergence Analysis for Non-Convex Decentralized Learning

19 October 2021
Sulaiman A. Alghunaim
Kun Yuan
ArXivPDFHTML

Papers citing "A Unified and Refined Convergence Analysis for Non-Convex Decentralized Learning"

35 / 35 papers shown
Title
Argus: Federated Non-convex Bilevel Learning over 6G Space-Air-Ground Integrated Network
Argus: Federated Non-convex Bilevel Learning over 6G Space-Air-Ground Integrated Network
Ya Liu
Kai Yang
Yu Zhu
Keying Yang
Haibo Zhao
14
0
0
14 May 2025
Decentralized Nonconvex Composite Federated Learning with Gradient Tracking and Momentum
Decentralized Nonconvex Composite Federated Learning with Gradient Tracking and Momentum
Yuan Zhou
Xinli Shi
Xuelong Li
Jiachen Zhong
G. Wen
Jinde Cao
FedML
41
0
0
17 Apr 2025
Distributed Learning over Arbitrary Topology: Linear Speed-Up with Polynomial Transient Time
Distributed Learning over Arbitrary Topology: Linear Speed-Up with Polynomial Transient Time
Runze You
Shi Pu
44
0
0
20 Mar 2025
A Bias-Correction Decentralized Stochastic Gradient Algorithm with Momentum Acceleration
A Bias-Correction Decentralized Stochastic Gradient Algorithm with Momentum Acceleration
Yuchen Hu
Xi Chen
Weidong Liu
Xiaojun Mao
57
0
0
31 Jan 2025
Generalization Error Matters in Decentralized Learning Under Byzantine
  Attacks
Generalization Error Matters in Decentralized Learning Under Byzantine Attacks
Haoxiang Ye
Qing Ling
37
0
0
11 Jul 2024
On the Trade-off between Flatness and Optimization in Distributed
  Learning
On the Trade-off between Flatness and Optimization in Distributed Learning
Ying Cao
Zhaoxian Wu
Kun Yuan
Ali H. Sayed
36
1
0
28 Jun 2024
Adjacent Leader Decentralized Stochastic Gradient Descent
Adjacent Leader Decentralized Stochastic Gradient Descent
Haoze He
Jing Wang
A. Choromańska
22
0
0
18 May 2024
Convergence of Decentralized Stochastic Subgradient-based Methods for Nonsmooth Nonconvex functions
Convergence of Decentralized Stochastic Subgradient-based Methods for Nonsmooth Nonconvex functions
Siyuan Zhang
Nachuan Xiao
Xin Liu
61
1
0
18 Mar 2024
An Accelerated Distributed Stochastic Gradient Method with Momentum
An Accelerated Distributed Stochastic Gradient Method with Momentum
Kun-Yen Huang
Shi Pu
Angelia Nedić
27
8
0
15 Feb 2024
Diffusion Stochastic Optimization for Min-Max Problems
Diffusion Stochastic Optimization for Min-Max Problems
H. Cai
Sulaiman A. Alghunaim
Ali H. Sayed
26
2
0
26 Jan 2024
On the Communication Complexity of Decentralized Bilevel Optimization
On the Communication Complexity of Decentralized Bilevel Optimization
Yihan Zhang
My T. Thai
Jie Wu
Hongchang Gao
20
3
0
19 Nov 2023
Locally Differentially Private Gradient Tracking for Distributed Online
  Learning over Directed Graphs
Locally Differentially Private Gradient Tracking for Distributed Online Learning over Directed Graphs
Ziqin Chen
Yongqiang Wang
FedML
16
2
0
24 Oct 2023
Revisiting Decentralized ProxSkip: Achieving Linear Speedup
Revisiting Decentralized ProxSkip: Achieving Linear Speedup
Luyao Guo
Sulaiman A. Alghunaim
Kun Yuan
Laurent Condat
Jinde Cao
FedML
36
1
0
12 Oct 2023
Online Distributed Learning with Quantized Finite-Time Coordination
Online Distributed Learning with Quantized Finite-Time Coordination
Nicola Bastianello
Apostolos I. Rikos
Karl H. Johansson
FedML
14
2
0
13 Jul 2023
Momentum Benefits Non-IID Federated Learning Simply and Provably
Momentum Benefits Non-IID Federated Learning Simply and Provably
Ziheng Cheng
Xinmeng Huang
Pengfei Wu
Kun Yuan
FedML
29
16
0
28 Jun 2023
Distributed Random Reshuffling Methods with Improved Convergence
Distributed Random Reshuffling Methods with Improved Convergence
Kun-Yen Huang
Linli Zhou
Shi Pu
24
4
0
21 Jun 2023
Optimized Gradient Tracking for Decentralized Online Learning
Optimized Gradient Tracking for Decentralized Online Learning
Shivangi Sharma
K. Rajawat
11
4
0
10 Jun 2023
DSGD-CECA: Decentralized SGD with Communication-Optimal Exact Consensus
  Algorithm
DSGD-CECA: Decentralized SGD with Communication-Optimal Exact Consensus Algorithm
Lisang Ding
Kexin Jin
Bicheng Ying
Kun Yuan
W. Yin
6
9
0
01 Jun 2023
Unbiased Compression Saves Communication in Distributed Optimization:
  When and How Much?
Unbiased Compression Saves Communication in Distributed Optimization: When and How Much?
Yutong He
Xinmeng Huang
Kun Yuan
29
8
0
25 May 2023
Lower Bounds and Accelerated Algorithms in Distributed Stochastic Optimization with Communication Compression
Lower Bounds and Accelerated Algorithms in Distributed Stochastic Optimization with Communication Compression
Yutong He
Xinmeng Huang
Yiming Chen
W. Yin
Kun Yuan
26
7
0
12 May 2023
Distributed Stochastic Optimization under a General Variance Condition
Distributed Stochastic Optimization under a General Variance Condition
Kun-Yen Huang
Xiao Li
Shin-Yi Pu
FedML
37
5
0
30 Jan 2023
CEDAS: A Compressed Decentralized Stochastic Gradient Method with
  Improved Convergence
CEDAS: A Compressed Decentralized Stochastic Gradient Method with Improved Convergence
Kun-Yen Huang
Shin-Yi Pu
30
9
0
14 Jan 2023
Optimal Complexity in Non-Convex Decentralized Learning over
  Time-Varying Networks
Optimal Complexity in Non-Convex Decentralized Learning over Time-Varying Networks
Xinmeng Huang
Kun Yuan
22
6
0
01 Nov 2022
Communication-Efficient Topologies for Decentralized Learning with
  $O(1)$ Consensus Rate
Communication-Efficient Topologies for Decentralized Learning with O(1)O(1)O(1) Consensus Rate
Zhuoqing Song
Weijian Li
Kexin Jin
Lei Shi
Ming Yan
W. Yin
Kun Yuan
6
31
0
14 Oct 2022
Revisiting Optimal Convergence Rate for Smooth and Non-convex Stochastic
  Decentralized Optimization
Revisiting Optimal Convergence Rate for Smooth and Non-convex Stochastic Decentralized Optimization
Kun Yuan
Xinmeng Huang
Yiming Chen
Xiaohan Zhang
Yingya Zhang
Pan Pan
16
17
0
14 Oct 2022
On the Performance of Gradient Tracking with Local Updates
On the Performance of Gradient Tracking with Local Updates
Edward Duc Hien Nguyen
Sulaiman A. Alghunaim
Kun Yuan
César A. Uribe
35
18
0
10 Oct 2022
Lower Bounds and Nearly Optimal Algorithms in Distributed Learning with
  Communication Compression
Lower Bounds and Nearly Optimal Algorithms in Distributed Learning with Communication Compression
Xinmeng Huang
Yiming Chen
W. Yin
Kun Yuan
25
25
0
08 Jun 2022
Data-heterogeneity-aware Mixing for Decentralized Learning
Data-heterogeneity-aware Mixing for Decentralized Learning
Yatin Dandi
Anastasia Koloskova
Martin Jaggi
Sebastian U. Stich
23
18
0
13 Apr 2022
Distributed Random Reshuffling over Networks
Distributed Random Reshuffling over Networks
Kun-Yen Huang
Xiao Li
Andre Milzarek
Shi Pu
Junwen Qiu
34
11
0
31 Dec 2021
BlueFog: Make Decentralized Algorithms Practical for Optimization and
  Deep Learning
BlueFog: Make Decentralized Algorithms Practical for Optimization and Deep Learning
Bicheng Ying
Kun Yuan
Hanbin Hu
Yiming Chen
W. Yin
FedML
31
27
0
08 Nov 2021
Exponential Graph is Provably Efficient for Decentralized Deep Training
Exponential Graph is Provably Efficient for Decentralized Deep Training
Bicheng Ying
Kun Yuan
Yiming Chen
Hanbin Hu
Pan Pan
W. Yin
FedML
36
83
0
26 Oct 2021
Decentralized Local Stochastic Extra-Gradient for Variational
  Inequalities
Decentralized Local Stochastic Extra-Gradient for Variational Inequalities
Aleksandr Beznosikov
Pavel Dvurechensky
Anastasia Koloskova
V. Samokhin
Sebastian U. Stich
Alexander Gasnikov
24
43
0
15 Jun 2021
Removing Data Heterogeneity Influence Enhances Network Topology
  Dependence of Decentralized SGD
Removing Data Heterogeneity Influence Enhances Network Topology Dependence of Decentralized SGD
Kun Yuan
Sulaiman A. Alghunaim
Xinmeng Huang
12
32
0
17 May 2021
Linear Convergence of Gradient and Proximal-Gradient Methods Under the
  Polyak-Łojasiewicz Condition
Linear Convergence of Gradient and Proximal-Gradient Methods Under the Polyak-Łojasiewicz Condition
Hamed Karimi
J. Nutini
Mark W. Schmidt
133
1,198
0
16 Aug 2016
Distributed Pareto Optimization via Diffusion Strategies
Distributed Pareto Optimization via Diffusion Strategies
Jianshu Chen
A. H. Sayed
59
174
0
13 Aug 2012
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