Ensemble Federated Learning With Non-IID Data in Wireless Networks

  • Zhongyuan Zhao
  • , Jingyi Wang
  • , Wei Hong
  • , Tony Q.S. Quek
  • , Zhiguo Ding
  • , Mugen Peng

    Research output: Contribution to journalArticlepeer-review

    27 Scopus citations

    Abstract

    Federated learning is a promising technique to implement network intelligence for the sixth generation (6G) communication systems. However, the collected data in wireless networks is non-independent and identically distributed (non-IID), which leads to severe deterioration of model performance. Although various enhanced schemes are proposed, it is still challenging to balance the communication cost and the model performance, due to the scarcity of radio resource for model update in wireless networks. In this paper, an ensemble federated learning paradigm is proposed for handling non-IID data, which is also optimized for its deployment in wireless networks in a cost efficient way. First, the framework of ensemble federated learning is designed. By formulating individual user clusters, intra-cluster federated learning models can be generated to reduce the impact of non-IID data, which can be integrated to adapt to various learning data via model ensemble. Second, the optimization of user cluster formation is studied to improve the performance of ensemble federated learning, which is modeled as a coalition formation game to design a Nash-stable algorithm. Finally, the simulation results on the public data sets are provided to verify the performance gains of our proposed schemes for deploying federated learning with non-IID data in wireless networks.

    Original languageBritish English
    Pages (from-to)3557-3571
    Number of pages15
    JournalIEEE Transactions on Wireless Communications
    Volume23
    Issue number4
    DOIs
    StatePublished - 1 Apr 2024

    Keywords

    • coalition formation game
    • federated learning
    • model ensemble
    • Network intelligence
    • non-IID data

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