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Bandit-based Communication-Efficient Client Selection Strategies for
  Federated Learning

Bandit-based Communication-Efficient Client Selection Strategies for Federated Learning

14 December 2020
Yae Jee Cho
Samarth Gupta
Gauri Joshi
Osman Yağan
    FedML
ArXivPDFHTML

Papers citing "Bandit-based Communication-Efficient Client Selection Strategies for Federated Learning"

30 / 30 papers shown
Title
Seamless Integration: Sampling Strategies in Federated Learning Systems
Seamless Integration: Sampling Strategies in Federated Learning Systems
T. Legler
Vinit Hegiste
Martin Ruskowski
FedML
41
1
0
18 Aug 2024
Federated Fairness Analytics: Quantifying Fairness in Federated Learning
Federated Fairness Analytics: Quantifying Fairness in Federated Learning
Oscar Dilley
Juan Marcelo Parra Ullauri
Rasheed Hussain
Dimitra Simeonidou
FedML
42
0
0
15 Aug 2024
FedAR: Addressing Client Unavailability in Federated Learning with Local
  Update Approximation and Rectification
FedAR: Addressing Client Unavailability in Federated Learning with Local Update Approximation and Rectification
Chutian Jiang
Hansong Zhou
Xiaonan Zhang
Shayok Chakraborty
FedML
51
1
0
26 Jul 2024
FedMIL: Federated-Multiple Instance Learning for Video Analysis with
  Optimized DPP Scheduling
FedMIL: Federated-Multiple Instance Learning for Video Analysis with Optimized DPP Scheduling
Ashish Bastola
Hao Wang
Xiwen Chen
Abolfazl Razi
28
0
0
26 Mar 2024
Multi-dimensional Fair Federated Learning
Multi-dimensional Fair Federated Learning
Cong Su
Guoxian Yu
Jun Wang
Hui Li
Qingzhong Li
Han Yu
FedML
27
3
0
09 Dec 2023
A Comprehensive Survey On Client Selections in Federated Learning
A Comprehensive Survey On Client Selections in Federated Learning
A. Gouissem
Z. Chkirbene
R. Hamila
FedML
11
6
0
12 Nov 2023
Enhanced Federated Optimization: Adaptive Unbiased Sampling with Reduced
  Variance
Enhanced Federated Optimization: Adaptive Unbiased Sampling with Reduced Variance
Dun Zeng
Zenglin Xu
Yu Pan
Xu Luo
Qifan Wang
Xiaoying Tang
FedML
17
1
0
04 Oct 2023
Intelligent Client Selection for Federated Learning using Cellular
  Automata
Intelligent Client Selection for Federated Learning using Cellular Automata
Nikolaos Pavlidis
V. Perifanis
Theodoros Panagiotis Chatzinikolaou
G. Sirakoulis
P. Efraimidis
28
3
0
01 Oct 2023
Federated Learning in UAV-Enhanced Networks: Joint Coverage and
  Convergence Time Optimization
Federated Learning in UAV-Enhanced Networks: Joint Coverage and Convergence Time Optimization
Mariam Yahya
S. Maghsudi
S. Stańczak
21
3
0
31 Aug 2023
A Four-Pronged Defense Against Byzantine Attacks in Federated Learning
A Four-Pronged Defense Against Byzantine Attacks in Federated Learning
Wei Wan
Shengshan Hu
Minghui Li
Jianrong Lu
Longling Zhang
Leo Yu Zhang
Hai Jin
AAML
FedML
42
20
0
07 Aug 2023
Fairness-Aware Client Selection for Federated Learning
Fairness-Aware Client Selection for Federated Learning
Yuxin Shi
Zelei Liu
Zhuan Shi
Han Yu
FedML
24
19
0
20 Jul 2023
Fairness and Privacy-Preserving in Federated Learning: A Survey
Fairness and Privacy-Preserving in Federated Learning: A Survey
Taki Hasan Rafi
Faiza Anan Noor
Tahmid Hussain
Dong-Kyu Chae
FedML
35
39
0
14 Jun 2023
A Systematic Literature Review on Client Selection in Federated Learning
A Systematic Literature Review on Client Selection in Federated Learning
Carl Smestad
Jingyue Li
20
19
0
08 Jun 2023
Client Selection for Generalization in Accelerated Federated Learning: A
  Multi-Armed Bandit Approach
Client Selection for Generalization in Accelerated Federated Learning: A Multi-Armed Bandit Approach
Dan Ben Ami
Kobi Cohen
Qing Zhao
FedML
32
11
0
18 Mar 2023
Network Anomaly Detection Using Federated Learning
Network Anomaly Detection Using Federated Learning
William Marfo
Deepak K. Tosh
Shirley V. Moore
FedML
21
14
0
13 Mar 2023
Communication-Efficient Local SGD with Age-Based Worker Selection
Communication-Efficient Local SGD with Age-Based Worker Selection
Feng Zhu
Jingjing Zhang
Xin Wang
35
1
0
31 Oct 2022
Study of the performance and scalability of federated learning for
  medical imaging with intermittent clients
Study of the performance and scalability of federated learning for medical imaging with intermittent clients
Judith Sáinz-Pardo Díaz
Á. García
FedML
OOD
24
51
0
18 Jul 2022
DELTA: Diverse Client Sampling for Fasting Federated Learning
DELTA: Diverse Client Sampling for Fasting Federated Learning
Lung-Chuang Wang
Yongxin Guo
Tao R. Lin
Xiaoying Tang
FedML
23
22
0
27 May 2022
Shielding Federated Learning: Robust Aggregation with Adaptive Client
  Selection
Shielding Federated Learning: Robust Aggregation with Adaptive Client Selection
Wei Wan
Shengshan Hu
Jianrong Lu
L. Zhang
Hai Jin
Yuanyuan He
AAML
6
31
0
28 Apr 2022
FLAME: Federated Learning Across Multi-device Environments
FLAME: Federated Learning Across Multi-device Environments
Hyunsung Cho
Akhil Mathur
F. Kawsar
16
21
0
17 Feb 2022
Variance-Reduced Heterogeneous Federated Learning via Stratified Client Selection
Guangyuan Shen
D. Gao
Libin Yang
Fang Zhou
Duanxiao Song
Wei Lou
Shirui Pan
FedML
19
8
0
15 Jan 2022
Multi-Model Federated Learning
Multi-Model Federated Learning
Neelkamal Bhuyan
Sharayu Moharir
FedML
13
19
0
07 Jan 2022
FedBalancer: Data and Pace Control for Efficient Federated Learning on
  Heterogeneous Clients
FedBalancer: Data and Pace Control for Efficient Federated Learning on Heterogeneous Clients
Jaemin Shin
Yuanchun Li
Yunxin Liu
Sung-Ju Lee
FedML
17
73
0
05 Jan 2022
Adaptive Client Sampling in Federated Learning via Online Learning with Bandit Feedback
Adaptive Client Sampling in Federated Learning via Online Learning with Bandit Feedback
Boxin Zhao
Lingxiao Wang
Mladen Kolar
Ziqi Liu
Qing Cui
Jun Zhou
Chaochao Chen
FedML
34
10
0
28 Dec 2021
Sparsified Secure Aggregation for Privacy-Preserving Federated Learning
Sparsified Secure Aggregation for Privacy-Preserving Federated Learning
Irem Ergun
Hasin Us Sami
Başak Güler
FedML
36
26
0
23 Dec 2021
AdaSplit: Adaptive Trade-offs for Resource-constrained Distributed Deep
  Learning
AdaSplit: Adaptive Trade-offs for Resource-constrained Distributed Deep Learning
Ayush Chopra
Surya Kant Sahu
Abhishek Singh
Abhinav Java
Praneeth Vepakomma
Vivek Sharma
Ramesh Raskar
32
26
0
02 Dec 2021
Towards Fairness-Aware Federated Learning
Towards Fairness-Aware Federated Learning
Yuxin Shi
Han Yu
Cyril Leung
FedML
21
79
0
02 Nov 2021
Securing Secure Aggregation: Mitigating Multi-Round Privacy Leakage in
  Federated Learning
Securing Secure Aggregation: Mitigating Multi-Round Privacy Leakage in Federated Learning
Jinhyun So
Ramy E. Ali
Başak Güler
Jiantao Jiao
Salman Avestimehr
FedML
37
77
0
07 Jun 2021
Learning to Satisfy Unknown Constraints in Iterative MPC
Learning to Satisfy Unknown Constraints in Iterative MPC
Monimoy Bujarbaruah
Charlott Vallon
Francesco Borrelli
13
8
0
09 Jun 2020
Learning Robustness with Bounded Failure: An Iterative MPC Approach
Learning Robustness with Bounded Failure: An Iterative MPC Approach
Monimoy Bujarbaruah
A. Shetty
K. Poolla
Francesco Borrelli
15
3
0
22 Nov 2019
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