通过跨客户端知识提炼实现个性化联合云边协作框架

IF 6.2 2区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Future Generation Computer Systems-The International Journal of Escience Pub Date : 2024-11-13 DOI:10.1016/j.future.2024.107594
Shining Zhang , Xingwei Wang , Rongfei Zeng , Chao Zeng , Ying Li , Min Huang
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引用次数: 0

摘要

作为一种新兴的分布式机器学习范式,联合学习已被广泛应用于云边缘计算领域,在不上传原始数据的情况下协同训练模型。然而,现有的联合学习方法都在努力训练一个涵盖所有参与客户端的最优模型。由于数据分布的变化和客户端数据可用性的限制,这些方法在某些客户端上可能表现不佳。此外,仅根据客户数据的数量为客户分配权重会忽略客户间的相关性。在本文中,我们提出了一种具有跨客户端知识提炼功能的个性化联合学习框架,称为 FedCD。FedCD 由跨客户端协同个性化知识融合的本地模型训练策略和通过对等相关性实现的全局模型加权聚合机制组成。在本地模型训练策略中,FedCD 融合了来自所有客户端的相似个性化知识,以指导客户端的 lcoal 训练。在全局模型加权聚合机制中,服务器根据客户端在客户端中的影响力为客户端分配权重。在各种数据集上进行的广泛实验表明,与基线方法相比,FedCD 显著提高了测试准确率,提高幅度约为 0.18%-16.65% 。
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A personalized federated cloud-edge collaboration framework via cross-client knowledge distillation
As an emerging distributed machine learning paradigm, federated learning has been extensively used in the domain of cloud–edge computing to collaboratively train models without uploading their raw data. However, the existing federated learning methods make an effort to train a single optimal model that encompasses all participating clients. These methods may perform poorly on some clients due to variations in data distribution and limited data availability of clients. Moreover, assigning weights to clients merely based on the quantity of the client data neglects the inter-client correlation. In this paper, we propose a personalized federated learning framework with cross-client knowledge distillation called FedCD. FedCD is composed of a local model training strategy with cross-client co-personalized knowledge fusion and a global model weighted aggregation mechanism via peer correlation. In the local model training strategy, FedCD fuses similar personalized knowledge from all clients to guide the lcoal training of the client. In the global model weighted aggregation mechanism, the server assigns weights to clients based on their influence among clients. Extensive experiments conducted on various datasets demonstrate that FedCD significantly improves the test accuracy by approximately 0.18%–16.65% compared to the baseline methods.
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来源期刊
CiteScore
19.90
自引率
2.70%
发文量
376
审稿时长
10.6 months
期刊介绍: Computing infrastructures and systems are constantly evolving, resulting in increasingly complex and collaborative scientific applications. To cope with these advancements, there is a growing need for collaborative tools that can effectively map, control, and execute these applications. Furthermore, with the explosion of Big Data, there is a requirement for innovative methods and infrastructures to collect, analyze, and derive meaningful insights from the vast amount of data generated. This necessitates the integration of computational and storage capabilities, databases, sensors, and human collaboration. Future Generation Computer Systems aims to pioneer advancements in distributed systems, collaborative environments, high-performance computing, and Big Data analytics. It strives to stay at the forefront of developments in grids, clouds, and the Internet of Things (IoT) to effectively address the challenges posed by these wide-area, fully distributed sensing and computing systems.
期刊最新文献
Editorial Board AIHO: Enhancing task offloading and reducing latency in serverless multi-edge-to-cloud systems DSDM-TCSE: Deterministic storage and deletion mechanism for trusted cloud service environments Energy management in smart grids: An Edge-Cloud Continuum approach with Deep Q-learning Service migration with edge collaboration: Multi-agent deep reinforcement learning approach combined with user preference adaptation
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