Jan. 12, 2024, 2:04 p.m. | ML@CMU

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Evaluating models in federated networks is challenging due to factors such as client subsampling, data heterogeneity, and privacy. These factors introduce noise that can affect hyperparameter tuning algorithms and lead to suboptimal model selection. Hyperparameter tuning is critical to the success of cross-device federated learning applications. Unfortunately, federated networks face issues of scale, heterogeneity, and privacy, which introduce noise in the tuning process and make it difficult to faithfully evaluate the performance of various hyperparameters. Our work (MLSys’23) explores key …

algorithms applications articles client data deep dive evaluation face federated learning hyperparameter model selection networks noise privacy scale success

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