Clustered Federated Multi-Task Learning on Non-IID Data with Enhanced Privacy

Research output: Journal Publications and Reviews (RGC: 21, 22, 62)21_Publication in refereed journalpeer-review

2 Scopus Citations
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Author(s)

  • Tingting Yang
  • Xinying Liao
  • Farong Chen
  • Yao Xiao
  • Kan Yang

Detail(s)

Original languageEnglish
Pages (from-to)3453-3467
Journal / PublicationIEEE Internet of Things Journal
Volume10
Issue number4
Online published14 Dec 2022
Publication statusPublished - 15 Feb 2023

Abstract

Federated Learning is a machine learning prgadigm that enables the collaborative learning among clients while keeping the privacy of clients’ data. Federated multi-task learning deals with the statistic challenge of non-IID data by training a personalized model for each client, and yet requires all the clients to be always online in each training round. To eliminate the limitation of full-participation, we explore multi-task learning associated with model clustering, and first propose a clustered federated multi-task learning to achieve the multual-task learning on non-IID data, while simultaneously improving the communication efficiency and the model accuracy. To enhance its privacy, we adopt a general dual-server architecture and further propose a secure clustered federated multi-task learning by designing a series of secure two-party computation protocols. The convergence analysis and security analysis is conducted to prove the correctness and security of our methods. Numeric evaluation on public datasets validates that our methods are superior to state-of-the-art methods in dealing with non-IID data while protecting the privacy.

Research Area(s)

  • clustering, Computational modeling, Data models, Federated multi-task learning, Multitasking, non-IID data, privacy, Protocols, secure two-party computation, Servers, Task analysis, Training

Citation Format(s)

Clustered Federated Multi-Task Learning on Non-IID Data with Enhanced Privacy. / Shu, Jiangang; Yang, Tingting; Liao, Xinying et al.

In: IEEE Internet of Things Journal, Vol. 10, No. 4, 15.02.2023, p. 3453-3467.

Research output: Journal Publications and Reviews (RGC: 21, 22, 62)21_Publication in refereed journalpeer-review