TY - GEN
T1 - Towards Energy-efficient Resource Allocation for Federated Learning in Mobile Edge Computing
AU - Ma, Wenqiang
AU - Zhao, Yong
AU - Sun, Wen
AU - Liu, Yuan
AU - Guo, Bin
AU - Niyato, Dusit
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023
Y1 - 2023
N2 - Federated learning has become a promising technology that enables edge devices to participate intelligent modeling without sharing data, and thus realizing edge intelligence in mobile edge computing (MEC). In this paper, we propose an energy-efficient resource allocation framework for federated learning in MEC. Different from existing works, we consider the heterogeneous and the dynamic nature (e.g., stragglers, diverging interests, and intermittent drop-out) of edge devices and their effects on the convergence and energy efficiency of federated learning. The proposed framework leverages multi-agent reinforcement learning to enable different devices to flexibly modify their federated learning policies based on the environment and their own status. The convergence and energy efficiency of federated learning can be further improved through collaborative decision-making and mutual compromise among devices. The numerical results showed that the proposed framework could greatly improve the convergence performance of federated learning model compared to baselines while achieving efficient and sustainable use of energy.
AB - Federated learning has become a promising technology that enables edge devices to participate intelligent modeling without sharing data, and thus realizing edge intelligence in mobile edge computing (MEC). In this paper, we propose an energy-efficient resource allocation framework for federated learning in MEC. Different from existing works, we consider the heterogeneous and the dynamic nature (e.g., stragglers, diverging interests, and intermittent drop-out) of edge devices and their effects on the convergence and energy efficiency of federated learning. The proposed framework leverages multi-agent reinforcement learning to enable different devices to flexibly modify their federated learning policies based on the environment and their own status. The convergence and energy efficiency of federated learning can be further improved through collaborative decision-making and mutual compromise among devices. The numerical results showed that the proposed framework could greatly improve the convergence performance of federated learning model compared to baselines while achieving efficient and sustainable use of energy.
KW - Energy-efficient
KW - Federated Learning
KW - Multi-agent Deep Reinforcement Learning
KW - Resource Management
UR - http://www.scopus.com/inward/record.url?scp=85188250416&partnerID=8YFLogxK
U2 - 10.1109/AIoTSys58602.2023.00060
DO - 10.1109/AIoTSys58602.2023.00060
M3 - 会议稿件
AN - SCOPUS:85188250416
T3 - Proceedings - 2023 International Conference on Artificial Intelligence of Things and Systems, AIoTSys 2023
SP - 257
EP - 264
BT - Proceedings - 2023 International Conference on Artificial Intelligence of Things and Systems, AIoTSys 2023
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2023 International Conference on Artificial Intelligence of Things and Systems, AIoTSys 2023
Y2 - 19 October 2023 through 22 October 2023
ER -