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Federated Learning for 6G: Paradigms, Taxonomy, Recent Advances and
  Insights

Federated Learning for 6G: Paradigms, Taxonomy, Recent Advances and Insights

7 December 2023
Maryam Ben Driss
Essaid Sabir
H. Elbiaze
Walid Saad
ArXivPDFHTML

Papers citing "Federated Learning for 6G: Paradigms, Taxonomy, Recent Advances and Insights"

17 / 17 papers shown
Title
A Green Multi-Attribute Client Selection for Over-The-Air Federated
  Learning: A Grey-Wolf-Optimizer Approach
A Green Multi-Attribute Client Selection for Over-The-Air Federated Learning: A Grey-Wolf-Optimizer Approach
Maryam Ben Driss
Essaid Sabir
H. Elbiaze
Abdoulaye Baniré Diallo
M. Sadik
23
0
0
16 Sep 2024
A Zero Trust Framework for Realization and Defense Against Generative AI
  Attacks in Power Grid
A Zero Trust Framework for Realization and Defense Against Generative AI Attacks in Power Grid
M. S. Munir
Sravanthi Proddatoori
Manjushree Muralidhara
Walid Saad
Zhu Han
Sachin Shetty
23
5
0
11 Mar 2024
The Internet of Federated Things (IoFT): A Vision for the Future and
  In-depth Survey of Data-driven Approaches for Federated Learning
The Internet of Federated Things (IoFT): A Vision for the Future and In-depth Survey of Data-driven Approaches for Federated Learning
Raed Al Kontar
Naichen Shi
Xubo Yue
Seokhyun Chung
E. Byon
...
C. Okwudire
Garvesh Raskutti
R. Saigal
Karandeep Singh
Ye Zhisheng
FedML
28
47
0
09 Nov 2021
DQRE-SCnet: A novel hybrid approach for selecting users in Federated
  Learning with Deep-Q-Reinforcement Learning based on Spectral Clustering
DQRE-SCnet: A novel hybrid approach for selecting users in Federated Learning with Deep-Q-Reinforcement Learning based on Spectral Clustering
Mohsen Ahmadi
Ali Taghavirashidizadeh
D. Javaheri
Armin Masoumian
Saeid Jafarzadeh Ghoushchi
Y. Pourasad
FedML
27
60
0
07 Nov 2021
Fast, Reliable, and Secure Drone Communication: A Comprehensive Survey
Fast, Reliable, and Secure Drone Communication: A Comprehensive Survey
Vikas Hassija
V. Chamola
Adhar Agrawal
Adit Goyal
Nguyen Cong Luong
Dusit Niyato
F. R. Yu
M. Guizani
29
134
0
04 May 2021
Towards Personalized Federated Learning
Towards Personalized Federated Learning
A. Tan
Han Yu
Li-zhen Cui
Qiang Yang
FedML
AI4CE
183
840
0
01 Mar 2021
Extended Reality (XR) Remote Research: a Survey of Drawbacks and
  Opportunities
Extended Reality (XR) Remote Research: a Survey of Drawbacks and Opportunities
J. Ratcliffe
F. Soave
Nick Bryan-Kinns
L. Tokarchuk
I. Farkhatdinov
36
119
0
20 Jan 2021
Towards Energy Efficient Federated Learning over 5G+ Mobile Devices
Towards Energy Efficient Federated Learning over 5G+ Mobile Devices
Dian Shi
Liang Li
Rui Chen
Pavana Prakash
M. Pan
Yuguang Fang
31
44
0
13 Jan 2021
Opportunities of Federated Learning in Connected, Cooperative and
  Automated Industrial Systems
Opportunities of Federated Learning in Connected, Cooperative and Automated Industrial Systems
S. Savazzi
M. Nicoli
M. Bennis
Sanaz Kianoush
Luca Barbieri
FedML
AIFin
AI4CE
38
124
0
09 Jan 2021
Federated Learning-Based Risk-Aware Decision toMitigate Fake Task
  Impacts on CrowdsensingPlatforms
Federated Learning-Based Risk-Aware Decision toMitigate Fake Task Impacts on CrowdsensingPlatforms
Zhiyan Chen
Murat Simsek
B. Kantarci
27
9
0
04 Jan 2021
Federated Learning for Channel Estimation in Conventional and
  RIS-Assisted Massive MIMO
Federated Learning for Channel Estimation in Conventional and RIS-Assisted Massive MIMO
Ahmet M. Elbir
Sinem Coleri
24
128
0
25 Aug 2020
FedML: A Research Library and Benchmark for Federated Machine Learning
FedML: A Research Library and Benchmark for Federated Machine Learning
Chaoyang He
Songze Li
Jinhyun So
Xiao Zeng
Mi Zhang
...
Yang Liu
Ramesh Raskar
Qiang Yang
M. Annavaram
Salman Avestimehr
FedML
162
563
0
27 Jul 2020
IBM Federated Learning: an Enterprise Framework White Paper V0.1
IBM Federated Learning: an Enterprise Framework White Paper V0.1
Heiko Ludwig
Nathalie Baracaldo
Gegi Thomas
Yi Zhou
Ali Anwar
...
Sean Laguna
Mikhail Yurochkin
Mayank Agarwal
Ebube Chuba
Annie Abay
FedML
124
156
0
22 Jul 2020
Federated Learning for Task and Resource Allocation in Wireless High
  Altitude Balloon Networks
Federated Learning for Task and Resource Allocation in Wireless High Altitude Balloon Networks
Sihua Wang
Mingzhe Chen
Changchuan Yin
Walid Saad
C. Hong
Shuguang Cui
H. Vincent Poor
26
67
0
19 Mar 2020
Threats to Federated Learning: A Survey
Threats to Federated Learning: A Survey
Lingjuan Lyu
Han Yu
Qiang Yang
FedML
186
432
0
04 Mar 2020
Adaptive Federated Learning in Resource Constrained Edge Computing
  Systems
Adaptive Federated Learning in Resource Constrained Edge Computing Systems
Shiqiang Wang
Tiffany Tuor
Theodoros Salonidis
K. Leung
C. Makaya
T. He
Kevin S. Chan
141
1,680
0
14 Apr 2018
An Introduction to Deep Learning for the Physical Layer
An Introduction to Deep Learning for the Physical Layer
Tim O'Shea
J. Hoydis
AI4CE
87
2,166
0
02 Feb 2017
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