April 12, 2024, 4:43 a.m. | Ruqi Bai, Saurabh Bagchi, David I. Inouye

cs.LG updates on arXiv.org arxiv.org

arXiv:2307.04942v2 Announce Type: replace
Abstract: While prior domain generalization (DG) benchmarks consider train-test dataset heterogeneity, we evaluate Federated DG which introduces federated learning (FL) specific challenges. Additionally, we explore domain-based heterogeneity in clients' local datasets - a realistic Federated DG scenario. Prior Federated DG evaluations are limited in terms of the number or heterogeneity of clients and dataset diversity. To address this gap, we propose an Federated DG benchmark methodology that enables control of the number and heterogeneity of clients …

algorithms arxiv benchmarking cs.lg domain type

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