ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 2009.10601
  4. Cited By
When Deep Reinforcement Learning Meets Federated Learning: Intelligent
  Multi-Timescale Resource Management for Multi-access Edge Computing in 5G
  Ultra Dense Network

When Deep Reinforcement Learning Meets Federated Learning: Intelligent Multi-Timescale Resource Management for Multi-access Edge Computing in 5G Ultra Dense Network

22 September 2020
Shuai Yu
Xu Chen
Zhi Zhou
Xiaowen Gong
Di Wu
ArXivPDFHTML

Papers citing "When Deep Reinforcement Learning Meets Federated Learning: Intelligent Multi-Timescale Resource Management for Multi-access Edge Computing in 5G Ultra Dense Network"

13 / 13 papers shown
Title
FedADP: Unified Model Aggregation for Federated Learning with Heterogeneous Model Architectures
FedADP: Unified Model Aggregation for Federated Learning with Heterogeneous Model Architectures
Jiacheng Wang
Hongtao Lv
Lei Liu
FedML
25
0
0
10 May 2025
Federated Offline Policy Optimization with Dual Regularization
Federated Offline Policy Optimization with Dual Regularization
Sheng Yue
Zerui Qin
Xingyuan Hua
Yongheng Deng
Ju Ren
OffRL
32
0
0
24 May 2024
Federated Learning: A Cutting-Edge Survey of the Latest Advancements and
  Applications
Federated Learning: A Cutting-Edge Survey of the Latest Advancements and Applications
Azim Akhtarshenas
Mohammad Ali Vahedifar
Navid Ayoobi
B. Maham
Tohid Alizadeh
Sina Ebrahimi
David López-Pérez
FedML
38
5
0
08 Oct 2023
Collaborative Policy Learning for Dynamic Scheduling Tasks in
  Cloud-Edge-Terminal IoT Networks Using Federated Reinforcement Learning
Collaborative Policy Learning for Dynamic Scheduling Tasks in Cloud-Edge-Terminal IoT Networks Using Federated Reinforcement Learning
Do-Yup Kim
Dami Lee
Ji-Wan Kim
Hyun-Suk Lee
31
6
0
02 Jul 2023
User-centric Heterogeneous-action Deep Reinforcement Learning for
  Virtual Reality in the Metaverse over Wireless Networks
User-centric Heterogeneous-action Deep Reinforcement Learning for Virtual Reality in the Metaverse over Wireless Networks
Wen-li Yu
Terence Jie Chua
Junfeng Zhao
EgoV
34
18
0
03 Feb 2023
FedHQL: Federated Heterogeneous Q-Learning
FedHQL: Federated Heterogeneous Q-Learning
Flint Xiaofeng Fan
Yining Ma
Zhongxiang Dai
Cheston Tan
Bryan Kian Hsiang Low
Roger Wattenhofer
FedML
24
7
0
26 Jan 2023
New Challenges in Reinforcement Learning: A Survey of Security and
  Privacy
New Challenges in Reinforcement Learning: A Survey of Security and Privacy
Yunjiao Lei
Dayong Ye
Sheng Shen
Yulei Sui
Tianqing Zhu
Wanlei Zhou
38
18
0
31 Dec 2022
ISFL: Federated Learning for Non-i.i.d. Data with Local Importance
  Sampling
ISFL: Federated Learning for Non-i.i.d. Data with Local Importance Sampling
Zheqi Zhu
Yuchen Shi
Pingyi Fan
Chenghui Peng
Khaled B. Letaief
FedML
25
8
0
05 Oct 2022
Computation Offloading and Resource Allocation in F-RANs: A Federated
  Deep Reinforcement Learning Approach
Computation Offloading and Resource Allocation in F-RANs: A Federated Deep Reinforcement Learning Approach
Lingling Zhang
Yanxiang Jiang
F. Zheng
M. Bennis
X. You
16
6
0
13 Jun 2022
Edge Learning for B5G Networks with Distributed Signal Processing:
  Semantic Communication, Edge Computing, and Wireless Sensing
Edge Learning for B5G Networks with Distributed Signal Processing: Semantic Communication, Edge Computing, and Wireless Sensing
Wei Xu
Zhaohui Yang
Derrick Wing Kwan Ng
Marco Levorato
Yonina C. Eldar
Mérouane Debbah
34
399
0
01 Jun 2022
Resource-constrained Federated Edge Learning with Heterogeneous Data:
  Formulation and Analysis
Resource-constrained Federated Edge Learning with Heterogeneous Data: Formulation and Analysis
Yi Liu
Yuanshao Zhu
James J. Q. Yu
FedML
27
28
0
14 Oct 2021
Reinforcement Learning for Intelligent Healthcare Systems: A
  Comprehensive Survey
Reinforcement Learning for Intelligent Healthcare Systems: A Comprehensive Survey
A. Abdellatif
N. Mhaisen
Z. Chkirbene
Amr M. Mohamed
A. Erbad
Mohsen Guizani
OffRL
AI4TS
20
21
0
05 Aug 2021
HierTrain: Fast Hierarchical Edge AI Learning with Hybrid Parallelism in
  Mobile-Edge-Cloud Computing
HierTrain: Fast Hierarchical Edge AI Learning with Hybrid Parallelism in Mobile-Edge-Cloud Computing
Deyin Liu
Xu Chen
Zhi Zhou
Qing Ling
40
46
0
22 Mar 2020
1