Motley: Benchmarking heterogeneity and personalization in federated learning

S Wu, T Li, Z Charles, Y Xiao, Z Liu, Z Xu… - arXiv preprint arXiv …, 2022 - arxiv.org
arXiv preprint arXiv:2206.09262, 2022arxiv.org
Personalized federated learning considers learning models unique to each client in a
heterogeneous network. The resulting client-specific models have been purported to
improve metrics such as accuracy, fairness, and robustness in federated networks. However,
despite a plethora of work in this area, it remains unclear:(1) which personalization
techniques are most effective in various settings, and (2) how important personalization truly
is for realistic federated applications. To better answer these questions, we propose Motley …
Personalized federated learning considers learning models unique to each client in a heterogeneous network. The resulting client-specific models have been purported to improve metrics such as accuracy, fairness, and robustness in federated networks. However, despite a plethora of work in this area, it remains unclear: (1) which personalization techniques are most effective in various settings, and (2) how important personalization truly is for realistic federated applications. To better answer these questions, we propose Motley, a benchmark for personalized federated learning. Motley consists of a suite of cross-device and cross-silo federated datasets from varied problem domains, as well as thorough evaluation metrics for better understanding the possible impacts of personalization. We establish baselines on the benchmark by comparing a number of representative personalized federated learning methods. These initial results highlight strengths and weaknesses of existing approaches, and raise several open questions for the community. Motley aims to provide a reproducible means with which to advance developments in personalized and heterogeneity-aware federated learning, as well as the related areas of transfer learning, meta-learning, and multi-task learning.
arxiv.org
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