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Closing the Gap between Client and Global Model Performance in
  Heterogeneous Federated Learning

Closing the Gap between Client and Global Model Performance in Heterogeneous Federated Learning

7 November 2022
Hongrui Shi
Valentin Radu
Po Yang
    FedML
ArXivPDFHTML

Papers citing "Closing the Gap between Client and Global Model Performance in Heterogeneous Federated Learning"

10 / 10 papers shown
Title
Federated Model Distillation with Noise-Free Differential Privacy
Federated Model Distillation with Noise-Free Differential Privacy
Lichao Sun
Lingjuan Lyu
FedML
73
107
0
11 Sep 2020
FedBE: Making Bayesian Model Ensemble Applicable to Federated Learning
FedBE: Making Bayesian Model Ensemble Applicable to Federated Learning
Hong-You Chen
Wei-Lun Chao
FedML
56
261
0
04 Sep 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
MoMe
FedML
55
1,336
0
15 Jul 2020
Think Locally, Act Globally: Federated Learning with Local and Global
  Representations
Think Locally, Act Globally: Federated Learning with Local and Global Representations
Paul Pu Liang
Terrance Liu
Liu Ziyin
Nicholas B. Allen
Randy P. Auerbach
David Brent
Ruslan Salakhutdinov
Louis-Philippe Morency
FedML
110
562
0
06 Jan 2020
Cronus: Robust and Heterogeneous Collaborative Learning with Black-Box
  Knowledge Transfer
Cronus: Robust and Heterogeneous Collaborative Learning with Black-Box Knowledge Transfer
Hong Chang
Virat Shejwalkar
Reza Shokri
Amir Houmansadr
FedML
75
168
0
24 Dec 2019
FedMD: Heterogenous Federated Learning via Model Distillation
FedMD: Heterogenous Federated Learning via Model Distillation
Daliang Li
Junpu Wang
FedML
88
854
0
08 Oct 2019
Measuring the Effects of Non-Identical Data Distribution for Federated
  Visual Classification
Measuring the Effects of Non-Identical Data Distribution for Federated Visual Classification
T. Hsu
Qi
Matthew Brown
FedML
138
1,148
0
13 Sep 2019
Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks
Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks
Chelsea Finn
Pieter Abbeel
Sergey Levine
OOD
823
11,899
0
09 Mar 2017
Learning without Forgetting
Learning without Forgetting
Zhizhong Li
Derek Hoiem
CLL
OOD
SSL
292
4,402
0
29 Jun 2016
Wide Residual Networks
Wide Residual Networks
Sergey Zagoruyko
N. Komodakis
334
7,984
0
23 May 2016
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