FedSR:基于增量子梯度优化的非iid数据半分散联邦学习框架

IF 6 2区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS
Jianjun Huang;Hao Huang;Li Kang;Lixin Ye
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引用次数: 0

摘要

在工业物联网(IoT)中,不同设备之间的数据异构性对联邦学习技术提出了巨大的挑战,显著降低了联邦学习模型的性能。此外,参与物联网联合学习和培训的大量设备给云服务器带来了巨大的计算负担。目前的联邦学习研究主要采用集中式或分散式的学习架构,无法从根本上解决这些问题。为了解决这个问题,我们提出了一种新的半集中式云边缘设备分层联邦学习框架,该框架集成了集中式和分散式联邦学习方法。具体来说,只有相邻设备的一个子集才能形成小规模的环集群,云服务器将环模型聚合在一起,构建全局模型。为了减轻设备间数据异质性的影响,我们在每个环簇中使用增量亚梯度优化算法来增强环簇模型的泛化能力。大量实验表明,与集中式和分散式联邦学习框架相比,我们的方法有效地减少了数据异构的影响,提高了模型性能,并显着减轻了云服务器上的通信负担。实际上,本文提出的框架旨在平衡集中式联邦学习和环形联邦学习的优势。与集中式联邦学习体系结构相比,它在解决数据非iid问题方面实现了卓越的性能,同时还减轻了与过大的环中环体系结构相关的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FedSR: A Semi-Decentralized Federated Learning Framework for Non-IID Data Based on Incremental Subgradient Optimization
In the Industrial Internet of Things (IoT), data heterogeneity across different devices poses a huge challenge to federated learning techniques, significantly reducing the performance of federated learning models. Additionally, the large number of devices participating in IoT federated learning and training imposes a substantial computational burden on cloud servers. Current federated learning research primarily adopts centralized or discentralized learning architectures, which cannot fundamentally solve these issues. To address this, we propose a novel semi-centralized cloud-edge-device hierarchical federate learning framework that integrated both centralized and decentralized federated learning approaches. Specifically, only a subset of adjacent devices forms small-scale ring clusters, and the cloud server aggregates the ring models to construct a global model. To mitigate the impact of data heterogeneity across devices, we use an incremental subgradient optimization algorithm within each ring cluster to enhance the generalization ability of the ring cluster models. Extensive experiments demonstrate that our approach effectively reduces the impact of data heterogeneity, improves model performance, and significantly alleviates the communication burden on cloud servers compared to centralized and discentralized federated learning frameworks. Indeed, the framework proposed in this paper aims to balance the strengths of centralized federated learning and ring federated learning. It achieves superior performance in addressing the data non-IID problem compared to centralized federated learning architectures while also mitigating issues associated with excessively large rings in ring architectures.
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来源期刊
IEEE Transactions on Parallel and Distributed Systems
IEEE Transactions on Parallel and Distributed Systems 工程技术-工程:电子与电气
CiteScore
11.00
自引率
9.40%
发文量
281
审稿时长
5.6 months
期刊介绍: IEEE Transactions on Parallel and Distributed Systems (TPDS) is published monthly. It publishes a range of papers, comments on previously published papers, and survey articles that deal with the parallel and distributed systems research areas of current importance to our readers. Particular areas of interest include, but are not limited to: a) Parallel and distributed algorithms, focusing on topics such as: models of computation; numerical, combinatorial, and data-intensive parallel algorithms, scalability of algorithms and data structures for parallel and distributed systems, communication and synchronization protocols, network algorithms, scheduling, and load balancing. b) Applications of parallel and distributed computing, including computational and data-enabled science and engineering, big data applications, parallel crowd sourcing, large-scale social network analysis, management of big data, cloud and grid computing, scientific and biomedical applications, mobile computing, and cyber-physical systems. c) Parallel and distributed architectures, including architectures for instruction-level and thread-level parallelism; design, analysis, implementation, fault resilience and performance measurements of multiple-processor systems; multicore processors, heterogeneous many-core systems; petascale and exascale systems designs; novel big data architectures; special purpose architectures, including graphics processors, signal processors, network processors, media accelerators, and other special purpose processors and accelerators; impact of technology on architecture; network and interconnect architectures; parallel I/O and storage systems; architecture of the memory hierarchy; power-efficient and green computing architectures; dependable architectures; and performance modeling and evaluation. d) Parallel and distributed software, including parallel and multicore programming languages and compilers, runtime systems, operating systems, Internet computing and web services, resource management including green computing, middleware for grids, clouds, and data centers, libraries, performance modeling and evaluation, parallel programming paradigms, and programming environments and tools.
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