Fed-QSSL: A Framework for Personalized Federated Learning under Bitwidth and Data Heterogeneity
DOI:
https://doi.org/10.1609/aaai.v38i10.29025Keywords:
ML: Distributed Machine Learning & Federated Learning, ML: Unsupervised & Self-Supervised LearningAbstract
Motivated by high resource costs of centralized machine learning schemes as well as data privacy concerns, federated learning (FL) emerged as an efficient alternative that relies on aggregating locally trained models rather than collecting clients' potentially private data. In practice, available resources and data distributions vary from one client to another, creating an inherent system heterogeneity that leads to deterioration of the performance of conventional FL algorithms. In this work, we present a federated quantization-based self-supervised learning scheme (Fed-QSSL) designed to address heterogeneity in FL systems. At clients' side, to tackle data heterogeneity we leverage distributed self-supervised learning while utilizing low-bit quantization to satisfy constraints imposed by local infrastructure and limited communication resources. At server's side, Fed-QSSL deploys de-quantization, weighted aggregation and re-quantization, ultimately creating models personalized to both data distribution as well as specific infrastructure of each client's device. We validated the proposed algorithm on real world datasets, demonstrating its efficacy, and theoretically analyzed impact of low-bit training on the convergence and robustness of the learned models.Downloads
Published
2024-03-24
How to Cite
Chen, Y., Vikalo, H., & Wang, C. (2024). Fed-QSSL: A Framework for Personalized Federated Learning under Bitwidth and Data Heterogeneity. Proceedings of the AAAI Conference on Artificial Intelligence, 38(10), 11443-11452. https://doi.org/10.1609/aaai.v38i10.29025
Issue
Section
AAAI Technical Track on Machine Learning I