ICML2023
Flash: Concept Drift Adaptation in Federated Learning
Kunjal Panchal, Sunav Choudhary, Subrata Mitra, Koyel Mukherjee, Somdeb Sarkhel, Saayan Mitra, Hui Guan
被引用 39 次
摘要
In Federated Learning (FL), adaptive optimization is an effective approach to addressing the statistical heterogeneity issue but cannot adapt quickly to concept drifts. In this work, we propose a novel adaptive optimizer called FLASH that simultaneously addresses both statistical heterogeneity and the concept drift issues. The fundamental insight is that a concept drift can be detected based on the magnitude of parameter updates that are required to fit the global model to each participating client's local data distribution. FLASH uses a two-pronged approach that synergizes clientside early-stopping training to facilitate detection of concept drifts and the server-side drift-aware adaptive optimization to effectively adjust effective learning rate. We theoretically prove that FLASH matches the convergence rate of state-ofthe-art adaptive optimizers and further empirically evaluate the efficacy of FLASH on a variety of FL benchmarks using different concept drift settings. Flash: Concept Drift Adaptation in Federated Learning