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Poster
in
Workshop: New Frontiers in Federated Learning: Privacy, Fairness, Robustness, Personalization and Data Ownership

FLoRA: Single-shot Hyper-parameter Optimization for Federated Learning

Yi Zhou · Parikshit Ram · Theodoros Salonidis · Nathalie Baracaldo · Horst Samulowitz · Heiko Ludwig


Abstract:

We address the relatively unexplored problem of hyper-parameter optimization (HPO) for federated learning (FL-HPO). We introduce {\bf F}ederated {\bf Lo}ss Su{\bf R}face {\bf A}ggregation (FLoRA), the first FL-HPO solution framework that can address use cases of tabular data and gradient boosting training algorithms in addition to stochastic gradient descent/neural networks commonly addressed in the FL literature. The framework enables single-shot FL-HPO, by first identifying a good set of hyper-parameters that are used in a {\em single} FL training. Thus, it enables FL-HPO solutions with minimal additional communication overhead compared to FL training without HPO. Our empirical evaluation of FLoRA for Gradient Boosted Decision Trees on seven OpenML data sets demonstrates significant model accuracy improvements over the considered baseline, and robustness to increasing number of parties involved in FL-HPO training.

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