个性化联邦学习中纯化知识转移的模型分解与重组

IF 7.7 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Transactions on Mobile Computing Pub Date : 2024-09-23 DOI:10.1109/TMC.2024.3466227
Jie Zhang;Song Guo;Xiaosong Ma;Wenchao Xu;Qihua Zhou;Jingcai Guo;Zicong Hong;Jun Shan
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引用次数: 0

摘要

个性化联邦学习(pFL)是为不同的客户协同训练不相同的机器学习模型,以适应其异构分布的数据集。现有的pFL方法注重利用客户之间的相互相似性来促进协同学习过程,同时难以摆脱聚合阶段不可避免的不相关知识池,从而阻碍了优化收敛,降低了个性化性能。为了解决这种促进协作和促进个性化之间的冲突,我们提出了一种新的pFL框架,称为pFedC,它首先将全局聚合的知识分解为多个组合分支,然后有选择地重新组装相关分支,以支持冲突客户之间的冲突感知协作。具体而言,通过将每个局部模型重构为一个共享的特征提取器和多个分解的任务分类器,将每个客户端的训练转化为一个相互强化且相对独立的多任务学习过程,为pFL研究提供了新的视角。此外,我们通过量化每个客户的组合权值,建立了一种纯化的知识聚合机制,以捕获客户的共同先验,并减轻由于异构数据引起的知识分歧所带来的潜在冲突。在各种模型和数据集上的大量实验证明了该算法的有效性和优越的性能。
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Model Decomposition and Reassembly for Purified Knowledge Transfer in Personalized Federated Learning
Personalized federated learning (pFL) is to collaboratively train non-identical machine learning models for different clients to adapt to their heterogeneously distributed datasets. State-of-the-art pFL approaches pay much attention on exploiting clients’ inter-similarities to facilitate the collaborative learning process, meanwhile, can barely escape from the irrelevant knowledge pooling that is inevitable during the aggregation phase, and thus hindering the optimization convergence and degrading the personalization performance. To tackle such conflicts between facilitating collaboration and promoting personalization, we propose a novel pFL framework, dubbed pFedC, to first decompose the global aggregated knowledge into several compositional branches, and then selectively reassemble the relevant branches for supporting conflicts-aware collaboration among contradictory clients. Specifically, by reconstructing each local model into a shared feature extractor and multiple decomposed task-specific classifiers, the training on each client transforms into a mutually reinforced and relatively independent multi-task learning process, which provides a new perspective for pFL. Besides, we conduct a purified knowledge aggregation mechanism via quantifying the combination weights for each client to capture clients’ common prior, as well as mitigate potential conflicts from the divergent knowledge caused by the heterogeneous data. Extensive experiments over various models and datasets demonstrate the effectiveness and superior performance of the proposed algorithm.
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来源期刊
IEEE Transactions on Mobile Computing
IEEE Transactions on Mobile Computing 工程技术-电信学
CiteScore
12.90
自引率
2.50%
发文量
403
审稿时长
6.6 months
期刊介绍: IEEE Transactions on Mobile Computing addresses key technical issues related to various aspects of mobile computing. This includes (a) architectures, (b) support services, (c) algorithm/protocol design and analysis, (d) mobile environments, (e) mobile communication systems, (f) applications, and (g) emerging technologies. Topics of interest span a wide range, covering aspects like mobile networks and hosts, mobility management, multimedia, operating system support, power management, online and mobile environments, security, scalability, reliability, and emerging technologies such as wearable computers, body area networks, and wireless sensor networks. The journal serves as a comprehensive platform for advancements in mobile computing research.
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