Networked Federated Meta-Learning Over Extending Graphs

Muhammad Asaad Cheema*, Vinay Chakravarthi Gogineni, Pierluigi Salvo Rossi, Stefan Werner

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

Abstract

Distributed and collaborative machine learning over emerging Internet of Things (IoT) networks is complicated by resource constraints, device, and data heterogeneity, and the need for personalized models that cater to the individual needs of each network device. This complexity becomes even more pronounced when new devices are added to a system that must rapidly adapt to personalized models. Along these lines, we propose a networked federated meta-learning (NF-ML) algorithm that utilizes meta-learning and underlying shared structures across the network to enable fast and personalized model adaptation of newly added network devices. The NF-ML algorithm learns two sets of model parameters for each device in a distributed manner, with devices communicating only with their immediate neighbors. One set of parameters is personalized for the device-specific task, whereas the other is a generic parameter set learned via peer-to-peer communication. The performance of the proposed NF-ML algorithm was validated using both synthetic and real-world data, and the results show that it adapts to new tasks in just a few epochs, using as little as 10% of the available data, significantly outperforming traditional federated learning methods.

Original languageEnglish
Pages (from-to)37988-37999
Number of pages12
JournalIEEE Internet of Things Journal
Volume11
Issue number23
DOIs
Publication statusPublished - 20 Nov 2024
MoE publication typeA1 Journal article-refereed

Keywords

  • Distributed
  • generic parameters
  • graph federated learning (GFL)
  • meta-learning

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