结构图联合学习:利用统计异质性的高维信息

IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
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引用次数: 0

摘要

随着图联合学习(GFL)的最新进展,它在有效应对与异构客户端相关的挑战方面表现出了良好的性能。虽然 GFL 的大部分进展都集中在阐明客户间错综复杂关系的技术上,但现有的 GFL 方法有两个局限性。首先,目前包括使用低维图形的方法无法准确描述客户机之间的关联,从而影响了 GFL 的性能。其次,在共享客户端隐藏表示时,这些方法可能会泄露更多信息。本文提出了一种结构 GFL(SGFL)框架和一套新颖的优化方法。SGFL 通过三个原创性贡献解决了现有 GFL 方法的局限性。首先,我们的方法主张利用客户端之间固有的高维信息动态构建联合学习(FL)图,同时在客户端内部发现分层社区。其次,我们提出了一种新颖的联合随机梯度优化算法 SG-FedX,该算法通过智能地使用全局表示来减轻异质性的影响。此外,SG-FedX 还引入了严格的共享机制,通过避免共享模型参数以外的客户信息,更有效地保护客户隐私。我们在具有挑战性的非独立且相同分布的环境下,与十种具有代表性的 FL 算法进行了比较评估,结果表明 SG-FedX 性能优越。我们注意到,在跨数据集场景中,SG-FedX 的个性化和泛化性能分别比第二好的基线高出 8.12% 和 7.91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structural graph federated learning: Exploiting high-dimensional information of statistical heterogeneity

With the recent progress in graph-federated learning (GFL), it has demonstrated a promising performance in effectively addressing challenges associated with heterogeneous clients. Although the majority of advances in GFL have been focused on techniques for elucidating the intricate relationships among clients, existing GFL methods have two limitations. First, current methods comprising the use of low-dimensional graphs fail to accurately depict the associations between clients, thereby compromising the performance of GFL. Second, these methods may disclose additional information when sharing client-side hidden representations. This paper presents a structural GFL (SGFL) framework and a suite of novel optimization methods. SGFL addresses the limitations of existing GFL approaches with three original contributions. Firstly, our approach advocates the dynamic construction of federated learning (FL) graphs by leveraging the high-dimensional information inherent among clients, while enabling the discovery of hierarchical communities within clients. Secondly, we present SG-FedX, a novel federated stochastic gradient optimization algorithm that mitigates the effects of heterogeneity by intelligently using a global representation. Furthermore, SG-FedX introduces a strict sharing mechanism that protects client privacy more effectively by refraining from sharing client information beyond the model parameters. Our comparative evaluations, conducted against ten representative FL algorithms under challenging non-independently-and-identically-distributed settings, demonstrated the superior performance of SG-FedX. It was noted that, in the cross-dataset scenarios, SG-FedX outperformed the second-best baseline by 8.12% and 7.91% in personalization and generalization performance, respectively.

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来源期刊
Knowledge-Based Systems
Knowledge-Based Systems 工程技术-计算机:人工智能
CiteScore
14.80
自引率
12.50%
发文量
1245
审稿时长
7.8 months
期刊介绍: Knowledge-Based Systems, an international and interdisciplinary journal in artificial intelligence, publishes original, innovative, and creative research results in the field. It focuses on knowledge-based and other artificial intelligence techniques-based systems. The journal aims to support human prediction and decision-making through data science and computation techniques, provide a balanced coverage of theory and practical study, and encourage the development and implementation of knowledge-based intelligence models, methods, systems, and software tools. Applications in business, government, education, engineering, and healthcare are emphasized.
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