When NOMA Meets AIGC: Enhanced Wireless Federated Learning
Ding Xu, Lingjie Duan, Hongbo Zhu

TL;DR
This paper introduces a novel approach combining NOMA and AIGC to improve wireless federated learning, addressing data scarcity and communication efficiency issues, and demonstrates its effectiveness through extensive simulations.
Contribution
It is the first to integrate NOMA with AIGC in WFL, optimizing data and resource allocation to enhance learning performance.
Findings
Proposed NOMA+AIGC scheme outperforms benchmark schemes.
Derived low-complexity optimal solution with partial closed-form expressions.
Validated effectiveness through extensive simulations.
Abstract
Wireless federated learning (WFL) enables devices to collaboratively train a global model via local model training, uploading and aggregating. However, WFL faces the data scarcity/heterogeneity problem (i.e., data are limited and unevenly distributed among devices) that degrades the learning performance. In this regard, artificial intelligence generated content (AIGC) can synthesize various types of data to compensate for the insufficient local data. Nevertheless, downloading synthetic data or uploading local models iteratively takes a lot of time, especially for a large amount of devices. To address this issue, we propose to leverage non-orthogonal multiple access (NOMA) to achieve efficient synthetic data and local model transmission. This paper is the first to combine AIGC and NOMA with WFL to maximally enhance the learning performance. For the proposed NOMA+AIGC-enhanced WFL, the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cooperative Communication and Network Coding · Advanced Wireless Communication Technologies
