原型分解知识提炼,用于学习广义联合表征

IF 8.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Aming Wu;Jiaping Yu;Yuxuan Wang;Cheng Deng
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引用次数: 0

摘要

联盟学习(FL)使分布式客户端能够协同学习一个全局模型,这表明它在改善机器学习中的数据隐私方面具有潜力。然而,尽管联合学习取得了许多进步,但当训练好的模型应用到未见过的领域时,其性能通常会因领域偏移的影响而下降。为了增强模型的泛化能力,我们重点解决了联合域泛化问题,其目的是将基于属于不同分布的多个源域训练的联合模型正确泛化到未见的目标域。本文提出了一种新方法,即原型分解知识蒸馏(PDKD)。具体来说,我们首先汇总从不同客户端学习到的本地类原型。然后,使用奇异值分解(SVD)技术对局部原型进行分解,以获得包含丰富类别相关信息的具有区分性和概括性的全局原型。最后,全局原型被发送回所有客户。我们利用知识提炼技术鼓励本地客户端模型从全局原型中提炼出概括性知识,从而提高概括能力。在多个数据集上的广泛实验证明了我们方法的有效性。特别是在 Office 数据集上实施时,我们的方法比 FedAvg 高出约 13.5%,这表明我们的方法有助于提高联合模型的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prototype-Decomposed Knowledge Distillation for Learning Generalized Federated Representation
Federated learning (FL) enables distributed clients to collaboratively learn a global model, suggesting its potential for use in improving data privacy in machine learning. However, although FL has made many advances, its performance usually suffers from degradation due to the impact of domain shift when the trained models are applied to unseen domains. To enhance the model's generalization ability, we focus on solving federated domain generalization, which aims to properly generalize a federated model trained based on multiple source domains belonging to different distributions to an unseen target domain. A novel approach, namely Prototype-Decomposed Knowledge Distillation (PDKD), is proposed herein. Concretely, we first aggregate the local class prototypes that are learned from different clients. Subsequently, Singular Value Decomposition (SVD) is employed to decompose the local prototypes to obtain discriminative and generalized global prototypes that contain rich category-related information. Finally, the global prototypes are sent back to all clients. We exploit knowledge distillation to encourage local client models to distill generalized knowledge from the global prototypes, which boosts the generalization ability. Extensive experiments on multiple datasets demonstrate the effectiveness of our method. In particular, when implemented on the Office dataset, our method outperforms FedAvg by around 13.5%, which shows that our method is instrumental in ameliorating the generalization ability of federated models.
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来源期刊
IEEE Transactions on Multimedia
IEEE Transactions on Multimedia 工程技术-电信学
CiteScore
11.70
自引率
11.00%
发文量
576
审稿时长
5.5 months
期刊介绍: The IEEE Transactions on Multimedia delves into diverse aspects of multimedia technology and applications, covering circuits, networking, signal processing, systems, software, and systems integration. The scope aligns with the Fields of Interest of the sponsors, ensuring a comprehensive exploration of research in multimedia.
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