Client selection in federated learning: Principles, challenges, and opportunities
As a privacy-preserving paradigm for training machine learning (ML) models, federated
learning (FL) has received tremendous attention from both industry and academia. In a …
learning (FL) has received tremendous attention from both industry and academia. In a …
Ringsfl: An adaptive split federated learning towards taming client heterogeneity
Federated learning (FL) has gained increasing attention due to its ability to collaboratively
train while protecting client data privacy. However, vanilla FL cannot adapt to client …
train while protecting client data privacy. However, vanilla FL cannot adapt to client …
pfedlvm: A large vision model (lvm)-driven and latent feature-based personalized federated learning framework in autonomous driving
Deep learning-based Autonomous Driving (AD) models often exhibit poor generalization
due to data heterogeneity in an ever domain-shifting environment. While Federated …
due to data heterogeneity in an ever domain-shifting environment. While Federated …
FedSZ: Leveraging error-bounded lossy compression for federated learning communications
With the promise of federated learning (FL) to allow for geographically-distributed and highly
personalized services, the efficient exchange of model updates between clients and servers …
personalized services, the efficient exchange of model updates between clients and servers …
Blockchain-inspired collaborative cyber-attacks detection for securing metaverse
The heterogeneous connections in metaverse environments pose vulnerabilities to cyber-
attacks. To prevent and mitigate malicious network activities in a distributed metaverse …
attacks. To prevent and mitigate malicious network activities in a distributed metaverse …
Secure and privacy-preserving federated learning-based resource allocation for next generation networks
This paper surveys recent research on federated learning-based resource allocation for next-
generation networks in order to identify research gaps and potential future directions. We …
generation networks in order to identify research gaps and potential future directions. We …
Adaptive and Parallel Split Federated Learning in Vehicular Edge Computing
Vehicular edge intelligence (VEI) is a promising paradigm for enabling future intelligent
transportation systems by accommodating artificial intelligence (AI) at the vehicular edge …
transportation systems by accommodating artificial intelligence (AI) at the vehicular edge …
Resource Aware Clustering for Tackling the Heterogeneity of Participants in Federated Learning
Federated Learning is a training framework that enables multiple participants to
collaboratively train a shared model while preserving data privacy. The heterogeneity of …
collaboratively train a shared model while preserving data privacy. The heterogeneity of …
Nodes selection review for federated learning in the blockchain‐based internet of things
MR Abdmeziem, H Akli, R Zourane - Security and Privacy, 2024 - Wiley Online Library
Abstract Internet of Things (IoT) gained momentum these last few years pushed by the
emergence of fast and reliable communication networks such as 5G and beyond. IoT …
emergence of fast and reliable communication networks such as 5G and beyond. IoT …
DraftFed: A Draft-Based Personalized Federated Learning Approach for Heterogeneous Convolutional Neural Networks
Y Liao, L Ma, B Zhou, X Zhao… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
In conventional federated learning, each device is restricted to train a network model of a
same structure. This greatly hinders the application of federated learning in edge devices …
same structure. This greatly hinders the application of federated learning in edge devices …