A Novel Federated Learning Scheme for Generative Adversarial Networks

计算机科学 生成语法 人工智能 方案(数学) 对抗制 理论计算机科学 机器学习 分布式计算 数学 数学分析
作者
Jiaxin Zhang,Liang Zhao,Keping Yu,Geyong Min,Ahmed Al‐Dubai,Albert Y. Zomaya
出处
期刊:IEEE Transactions on Mobile Computing [IEEE Computer Society]
卷期号:23 (5): 3633-3649 被引量:74
标识
DOI:10.1109/tmc.2023.3278668
摘要

Generative adversarial networks (GANs) have been advancing and gaining tremendous interests from both academia and industry. With the development of wireless technologies, a huge amount of data generated at the network edge provides an unprecedented opportunity to develop GANs applications. However, due to the constraints such as bandwidth, privacy, and legal issues, it is inappropriate to collect and send all data to the cloud or servers for analysis, training, and mining. Thus, deploying and training GANs at the edge becomes a promising alternative solution. The instability of GANs introduced by non-independent and identical data (Non-IID) poses significant challenges to training GANs. To address these challenges, this paper presents a novel federated learning framework for GANs, namely, C ollaborated g A me P arallel Learning (CAP). CAP supports parallel training of data and models for GANs, breaking the isolated training among generators that exists in the previous distributed algorithms, and achieving collaborative learning among cloud, edge servers, and devices. Then, to further enhance the ability of CAP-GAN for addressing Non-IID issues, we propose a Mix-Generator module (Mix-G) which divides a generator into the sharing layer and personalizing layer. The Mix-G module extracts the generic and personalization features and improves the performance of CAP-GAN on extremely personalizing datasets. Experimental results and analysis substantiate the usefulness and superiority of our proposed CAP-GAN scheme which can achieve better results in the Non-IID scenarios compared with the state-of-the-art algorithms.
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