Efficient Wireless Federated Learning with Partial Model Aggregation
Zhixiong Chen, Wenqiang Yi, Arumugam Nallanathan, Geoffrey Ye Li

TL;DR
This paper introduces a partial model aggregation framework for wireless federated learning that improves accuracy and resource efficiency by optimizing device scheduling, bandwidth, and time allocation.
Contribution
It proposes a novel partial model aggregation method and joint resource optimization strategies for wireless federated learning, addressing data heterogeneity and communication constraints.
Findings
Achieves up to 11.8% accuracy improvement on CIFAR-10.
Reduces energy consumption by up to 29%.
Decreases training time by approximately 20%.
Abstract
The data heterogeneity across devices and the limited communication resources, e.g., bandwidth and energy, are two of the main bottlenecks for wireless federated learning (FL). To tackle these challenges, we first devise a novel FL framework with partial model aggregation (PMA). This approach aggregates the lower layers of neural networks, responsible for feature extraction, at the parameter server while keeping the upper layers, responsible for complex pattern recognition, at devices for personalization. The proposed PMA-FL is able to address the data heterogeneity and reduce the transmitted information in wireless channels. Then, we derive a convergence bound of the framework under a non-convex loss function setting to reveal the role of unbalanced data size in the learning performance. On this basis, we maximize the scheduled data size to minimize the global loss function through…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Wireless Networks and Protocols
