Federated learning (FL) is a distributed machine learning technique that enables collaborative model training while avoiding explicit data sharing. The inherent privacy-preserving property of FL algorithms makes them especially attractive to the medical field. However, in case of heterogeneous client data distributions, standard FL methods are unstable and require intensive hyperparameter tuning to achieve optimal performance. Conventional hyperparameter optimization algorithms are impractical in real-world FL applications as they involve numerous training trials, which are often not affordable with limited compute budgets. In this work, we propose an efficient reinforcement learning (RL)-based federated hyperparameter optimization algorithm, termed Auto-FedRL, in which an online RL agent can dynamically adjust hyperparameters of each client based on the current training progress. Extensive experiments are conducted to investigate different search strategies and RL agents. The effectiveness of the proposed method is validated on a heterogeneous data split of the CIFAR-10 dataset as well as two real-world medical image segmentation datasets for COVID-19 lesion segmentation in chest CT and pancreas segmentation in abdominal CT.
翻译:联邦学习(FL)是一种分散的机器学习技术,它使得合作模式培训能够同时避免明确的数据共享。FL算法的内在隐私保护特性使其对医疗领域特别具有吸引力。然而,如果客户数据分布不一,标准的FL方法不稳定,需要密集的超参数调试才能达到最佳性能。常规超参数优化算法在现实世界FL应用中是不切实际的,因为它们涉及许多培训试验,而计算预算有限,这些试验往往无法负担得起。在这项工作中,我们建议采用高效的强化学习(RL)基于联合的超参数优化算法,称为Auto-FedRL,其中在线RL代理可以根据当前培训进展动态调整每个客户的超参数。进行广泛的实验,以调查不同的搜索战略和RL代理。拟议方法的有效性通过将CIFAR-10数据集的混合数据以及两个真实世界医学图像分割数据集来验证,用于胸腔CT的COVID-19分解和腹膜断裂。