Long-Term Client Selection for Federated Learning With Non-IID Data: A Truthful Auction Approach

Jinghong Tan, Zhian Liu, Kun Guo, Mingxiong Zhao*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

Federated learning (FL) provides a decentralized framework that enables universal model training through collaborative efforts on mobile nodes, such as smart vehicles in the Internet of Vehicles (IoV). Each smart vehicle acts as a mobile client, contributing to the process without uploading local data. This method leverages nonindependent and identically distributed (non-IID) training data from different vehicles, influenced by various driving patterns and environmental conditions, which can significantly impact model convergence and accuracy. Although client selection can be a feasible solution for non-IID issues, it faces challenges related to selection metrics. Traditional metrics evaluate client data quality independently per round and require client selection after all clients complete local training, leading to resource wastage from unused training results. In the IoV context, where vehicles have limited connectivity and computational resources, information asymmetry in client selection risks clients submitting false information, potentially making the selection ineffective. To tackle these challenges, we propose a novel long-term client-selection federated learning based on truthful auction (LCSFLA). This scheme maximizes social welfare with consideration of long-term data quality using a new assessment mechanism and energy costs, and the advised auction mechanism with a deposit requirement incentivizes client participation and ensures information truthfulness. We theoretically prove the incentive compatibility and individual rationality of the advised incentive mechanism. Experimental results on various datasets, including those from IoV scenarios, demonstrate its effectiveness in mitigating performance degradation caused by non-IID data.

Original languageEnglish
Pages (from-to)4953-4970
Number of pages18
JournalIEEE Internet of Things Journal
Volume12
Issue number5
DOIs
StatePublished - 2025

Keywords

  • Client selection
  • Internet of Vehicles (IoV)
  • data heterogeneity
  • federated learning
  • long-term assessment
  • truthful auction

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