基于强化学习的联邦模型搜索

Dixi Yao, Lingdong Wang, Jiayu Xu, Liyao Xiang, Shuo Shao, Yingqi Chen, Yanjun Tong
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引用次数: 3

摘要

联邦学习(FL)框架支持在保持数据本地的同时对分布式数据集进行训练。然而,很难定制一个适合所有未知局部数据的模型。预先确定的模型很可能导致收敛速度慢或精度低,特别是当分布式数据是非id的时候。为了解决这一问题,我们提出了一种联邦学习场景下的模型搜索方法,该方法自动搜索适合不可见的局部数据的模型结构。我们新颖地设计了一个基于强化学习的框架,该框架对参与者的子模型进行采样和分配,并通过最大化奖励来更新其模型选择策略。在实际应用中,由于模型搜索算法收敛时间较长,因此我们根据传输条件自适应地为参与者分配子模型。我们进一步提出延迟补偿同步,以减轻延迟更新的损失,以促进收敛。大量的实验表明,我们的联邦模型搜索算法可以有效地生成高精度的模型,特别是在非id上。数据。
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Federated Model Search via Reinforcement Learning
Federated Learning (FL) framework enables training over distributed datasets while keeping the data local. However, it is difficult to customize a model fitting for all unknown local data. A pre-determined model is most likely to lead to slow convergence or low accuracy, especially when the distributed data is non-i.i.d.. To resolve the issue, we propose a model searching method in the federated learning scenario, and the method automatically searches a model structure fitting for the unseen local data. We novelly design a reinforcement learning-based framework that samples and distributes sub-models to the participants and updates its model selection policy by maximizing the reward. In practice, the model search algorithm takes a long time to converge, and hence we adaptively assign sub-models to participants according to the transmission condition. We further propose delay-compensated synchronization to mitigate loss over late updates to facilitate convergence. Extensive experiments show that our federated model search algorithm produces highly accurate models efficiently, particularly on non-i.i.d. data.
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