Federated learning has attracted growing interest as it preserves the clients' privacy. As a variant of federated learning, federated transfer learning utilizes the knowledge from similar tasks and thus has also been intensively studied. However, due to the limited radio spectrum, the communication efficiency of federated learning via wireless links is critical since some tasks may require thousands of Terabytes of uplink payload. In order to improve the communication efficiency, we in this paper propose the feature-based federated transfer learning as an innovative approach to reduce the uplink payload by more than five orders of magnitude compared to that of existing approaches. We first introduce the system design in which the extracted features and outputs are uploaded instead of parameter updates, and then determine the required payload with this approach and provide comparisons with the existing approaches. Subsequently, we analyze the random shuffling scheme that preserves the clients' privacy. Finally, we evaluate the performance of the proposed learning scheme via experiments on an image classification task to show its effectiveness.
翻译:联邦学习在保护客户隐私方面引起了越来越多的兴趣。作为联邦学习的一种变体,联邦转移学习利用了来自类似任务的知识,因此也进行了深入研究。然而,由于无线电频谱有限,通过无线链接进行联邦学习的通信效率至关重要,因为有些任务可能需要数千个Terabytes的上链接有效载荷。为了提高通信效率,我们在本文件中建议采用基于地貌的联邦转移学习作为创新方法,将现有方法的顶链接有效载荷减少五级以上。我们首先采用系统设计,将提取的特性和产出上载,而不是更新参数,然后确定所需的有效载荷,并对现有方法进行比较。随后,我们分析了保护客户隐私的随机调整计划。最后,我们通过对图像分类任务进行实验来评估拟议的学习计划的业绩,以显示其有效性。