Federated variational generative learning for heterogeneous data in distributed environments

IF 3.4 3区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS
Wei Xie, Runqun Xiong, Jinghui Zhang, Jiahui Jin, Junzhou Luo
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引用次数: 0

Abstract

Distributedly training models across diverse clients with heterogeneous data samples can significantly impact the convergence of federated learning. Various novel federated learning methods address these challenges but often require significant communication resources and local computational capacity, leading to reduced global inference accuracy in scenarios with imbalanced label data distribution and quantity skew. To tackle these challenges, we propose FedVGL, a Federated Variational Generative Learning method that directly trains a local generative model to learn the distribution of local features and improve global target model inference accuracy during aggregation, particularly under conditions of severe data heterogeneity. FedVGL facilitates distributed learning by sharing generators and latent vectors with the global server, aiding in global target model training from mapping local data distribution to the variational latent space for feature reconstruction. Additionally, FedVGL implements anonymization and encryption techniques to bolster privacy during generative model transmission and aggregation. In comparison to vanilla federated learning, FedVGL minimizes communication overhead, demonstrating superior accuracy even with minimal communication rounds. It effectively mitigates model drift in scenarios with heterogeneous data, delivering improved target model training outcomes. Empirical results establish FedVGL's superiority over baseline federated learning methods under severe label imbalance and data skew condition. In a Label-based Dirichlet Distribution setting with α=0.01 and 10 clients using the MNIST dataset, FedVGL achieved an exceptional accuracy over 97% with the VGG-9 target model.

针对分布式环境中异构数据的联合变式生成学习
在具有异构数据样本的不同客户端上分布式训练模型,会严重影响联合学习的收敛性。各种新颖的联合学习方法都能应对这些挑战,但往往需要大量通信资源和本地计算能力,导致在标签数据分布不平衡和数量倾斜的情况下,全局推断的准确性降低。为了应对这些挑战,我们提出了 FedVGL,这是一种联合变异生成学习方法,它能直接训练局部生成模型,以学习局部特征的分布,并在聚合过程中提高全局目标模型推断的准确性,尤其是在数据异构严重的情况下。FedVGL 通过与全局服务器共享生成器和潜向量来促进分布式学习,通过将本地数据分布映射到用于特征重构的变异潜空间来帮助全局目标模型训练。此外,FedVGL 还采用了匿名和加密技术,以在生成模型传输和聚合过程中保护隐私。与传统的联合学习相比,FedVGL 最大限度地减少了通信开销,即使在通信轮数极少的情况下也能显示出卓越的准确性。它能有效缓解异构数据场景中的模型漂移,从而改善目标模型的训练结果。实证结果表明,在严重的标签不平衡和数据倾斜条件下,FedVGL 比基线联合学习方法更具优势。在基于标签的 Dirichlet 分布设置(α=0.01)和 10 个客户端使用 MNIST 数据集的情况下,FedVGL 的 VGG-9 目标模型的准确率超过了 97%。
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来源期刊
Journal of Parallel and Distributed Computing
Journal of Parallel and Distributed Computing 工程技术-计算机:理论方法
CiteScore
10.30
自引率
2.60%
发文量
172
审稿时长
12 months
期刊介绍: This international journal is directed to researchers, engineers, educators, managers, programmers, and users of computers who have particular interests in parallel processing and/or distributed computing. The Journal of Parallel and Distributed Computing publishes original research papers and timely review articles on the theory, design, evaluation, and use of parallel and/or distributed computing systems. The journal also features special issues on these topics; again covering the full range from the design to the use of our targeted systems.
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