Published August 18, 2022 | Version v1
Conference paper Open

Personalized Federated Learning via Convex Clustering

  • 1. Carnegie Mellon University, Pittsburgh, PA
  • 2. Faculty of Technical Sciences, University of Novi Sad, Novi Sad, Serbia
  • 3. Faculty of Sciences, University of Novi Sad, Novi Sad, Serbia

Description

We propose a parametric family of algorithms for personalized federated learning with locally convex user costs. The proposed framework is based on a generalization of convex clustering in which the differences between different users’ models are penalized via a sum-of-norms penalty, weighted by a penalty parameter λ. The proposed approach enables “automatic” model clustering, without prior knowledge of the hidden cluster structure, nor the number of clusters. Analytical bounds on the weight parameter, that lead to simultaneous personalization, generalization and automatic model clustering are provided. The solution to the formulated problem enables personalization, by providing different models across different clusters, and generalization, by providing models different than the per-user models computed in isolation. We then provide an efficient algorithm based on the Parallel Direction Method of Multipliers (PDMM) to solve the proposed formulation in a fed- erated server-users setting. Numerical experiments corroborate our findings. As an interesting byproduct, our results provide several generalizations to convex clustering.

Notes

The work of D. Bajovic and D. Jakovetic is supported by the European Union's Horizon 2020 Research and Innovation program under grant agreement No 957337. The work of A. Armacki and S. Kar was partially supported by the National Science Foundation under grant CNS-1837607. This paper reflects only the authors' views and the European Commission cannot be held responsible for any use which may be made of the information contained therein.

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Funding

MARVEL – Multimodal Extreme Scale Data Analytics for Smart Cities Environments 957337
European Commission
CPS: Medium: Secure Computing and Cross-Layer Anomaly Detection in the Internet of Things 1837607
National Science Foundation