Multi-task learning (MTL) is a learning paradigm to learn multiple related tasks simultaneously with a single shared network where each task has a distinct personalized header network for fine-tuning. MTL can be integrated into a federated learning (FL) setting if tasks are distributed across clients and clients have a single shared network, leading to personalized federated learning (PFL). To cope with statistical heterogeneity in the federated setting across clients which can significantly degrade the learning performance, we use a distributed dynamic weighting approach. To perform the communication between the remote parameter server (PS) and the clients efficiently over the noisy channel in a power and bandwidth-limited regime, we utilize over-the-air (OTA) aggregation and hierarchical federated learning (HFL). Thus, we propose hierarchical over-the-air (HOTA) PFL with a dynamic weighting strategy which we call HOTA-FedGradNorm. Our algorithm considers the channel conditions during the dynamic weight selection process. We conduct experiments on a wireless communication system dataset (RadComDynamic). The experimental results demonstrate that the training speed with HOTA-FedGradNorm is faster compared to the algorithms with a naive static equal weighting strategy. In addition, HOTA-FedGradNorm provides robustness against the negative channel effects by compensating for the channel conditions during the dynamic weight selection process.
翻译:多任务学习(MTL)是一种学习模式,可以同时学习多种相关任务,同时学习单一共享网络,每个任务都有一个独特的个性化信头网络,进行微调。如果任务在客户之间分配,客户之间有一个单一的共享网络,多任务学习(PFL),多任务学习(MTL)是一种学习模式。为了应对客户之间联结环境中的统计差异性,这可以显著降低学习业绩,我们使用分布式动态加权法。为了在电力和带宽制度下,在噪音频道上高效地进行远程参数服务器(PS)和客户之间的通信,我们可以使用超空(OTA)聚合和分级联结学习(HFL)的组合(FL)。因此,我们建议将超空(HOTA)PLL与动态加权战略(我们称之为HOTA-FGradNorm)相匹配。我们的算法在动态重量选择过程中考虑频道的负面条件。我们在无线通信系统数据集(RadComDminalmimic)上进行实验。实验结果显示,与SITA-Sqal-qal sqal sqal sqal comgrade speal be compeal beal beal beal be des compeal compeal speal speal des lad speciald speal compeal compeal des des 在Speal compeald sald sald sess graduction sal gration战略期间,提供了一种比重的比重战略。