TY - JOUR
T1 - Federated Learning and Meta Learning
T2 - Approaches, Applications, and Directions
AU - Liu, Xiaonan
AU - Deng, Yansha
AU - Nallanathan, Arumugam
AU - Bennis, Mehdi
N1 - Funding Information:
This work was supported in part by the Engineering and Physical Sciences Research Council (EPSRC), U.K., under Grant EP/W004348/1 and Grant EP/W004100/1, and in part by UKRI through the U.K. Government's Horizon Europe Funding Guarantee under Grant 10061781, as part of the European Commission-funded Collaborative Project VERGE through SNS JU Program under Grant 101096034.
Publisher Copyright:
© 1998-2012 IEEE.
PY - 2024/2/27
Y1 - 2024/2/27
N2 - Over the past few years, significant advancements have been made in the field of machine learning (ML) to address resource management, interference management, autonomy, and decision-making in wireless networks. Traditional ML approaches rely on centralized methods, where data is collected at a central server for training. However, this approach poses a challenge in terms of preserving the data privacy of devices. To address this issue, federated learning (FL) has emerged as an effective solution that allows edge devices to collaboratively train ML models without compromising data privacy. In FL, local datasets are not shared, and the focus is on learning a global model for a specific task involving all devices. However, FL has limitations when it comes to adapting the model to devices with different data distributions. In such cases, meta learning is considered, as it enables the adaptation of learning models to different data distributions using only a few data samples. In this tutorial, we present a comprehensive review of FL, meta learning, and federated meta learning (FedMeta). Unlike other tutorial papers, our objective is to explore how FL, meta learning, and FedMeta methodologies can be designed, optimized, and evolved, and their applications over wireless networks. We also analyze the relationships among these learning algorithms and examine their advantages and disadvantages in real-world applications.
AB - Over the past few years, significant advancements have been made in the field of machine learning (ML) to address resource management, interference management, autonomy, and decision-making in wireless networks. Traditional ML approaches rely on centralized methods, where data is collected at a central server for training. However, this approach poses a challenge in terms of preserving the data privacy of devices. To address this issue, federated learning (FL) has emerged as an effective solution that allows edge devices to collaboratively train ML models without compromising data privacy. In FL, local datasets are not shared, and the focus is on learning a global model for a specific task involving all devices. However, FL has limitations when it comes to adapting the model to devices with different data distributions. In such cases, meta learning is considered, as it enables the adaptation of learning models to different data distributions using only a few data samples. In this tutorial, we present a comprehensive review of FL, meta learning, and federated meta learning (FedMeta). Unlike other tutorial papers, our objective is to explore how FL, meta learning, and FedMeta methodologies can be designed, optimized, and evolved, and their applications over wireless networks. We also analyze the relationships among these learning algorithms and examine their advantages and disadvantages in real-world applications.
KW - Centralized learning
KW - Data models
KW - Data privacy
KW - distributed learning
KW - federated learning
KW - federated meta learning
KW - meta learning
KW - Metalearning
KW - Servers
KW - Surveys
KW - Task analysis
KW - Tutorials
KW - wireless networks
UR - http://www.scopus.com/inward/record.url?scp=85177085491&partnerID=8YFLogxK
U2 - 10.1109/COMST.2023.3330910
DO - 10.1109/COMST.2023.3330910
M3 - Article
AN - SCOPUS:85177085491
SN - 1553-877X
VL - 26
SP - 571
EP - 618
JO - Ieee Communications Surveys And Tutorials
JF - Ieee Communications Surveys And Tutorials
IS - 1
ER -