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Hauptverfasser: Wu, Zhengyu, Li, Xunkai, Zhu, Yinlin, Chen, Zekai, Yan, Guochen, Yan, Yanyu, Zhang, Hao, Ai, Yuming, Jin, Xinmo, Li, Rong-Hua, Wang, Guoren
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2507.16541
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author Wu, Zhengyu
Li, Xunkai
Zhu, Yinlin
Chen, Zekai
Yan, Guochen
Yan, Yanyu
Zhang, Hao
Ai, Yuming
Jin, Xinmo
Li, Rong-Hua
Wang, Guoren
author_facet Wu, Zhengyu
Li, Xunkai
Zhu, Yinlin
Chen, Zekai
Yan, Guochen
Yan, Yanyu
Zhang, Hao
Ai, Yuming
Jin, Xinmo
Li, Rong-Hua
Wang, Guoren
contents In the era of big data applications, Federated Graph Learning (FGL) has emerged as a prominent solution that reconcile the tradeoff between optimizing the collective intelligence between decentralized datasets holders and preserving sensitive information to maximum. Existing FGL surveys have contributed meaningfully but largely focus on integrating Federated Learning (FL) and Graph Machine Learning (GML), resulting in early stage taxonomies that emphasis on methodology and simulated scenarios. Notably, a data centric perspective, which systematically examines FGL methods through the lens of data properties and usage, remains unadapted to reorganize FGL research, yet it is critical to assess how FGL studies manage to tackle data centric constraints to enhance model performances. This survey propose a two-level data centric taxonomy: Data Characteristics, which categorizes studies based on the structural and distributional properties of datasets used in FGL, and Data Utilization, which analyzes the training procedures and techniques employed to overcome key data centric challenges. Each taxonomy level is defined by three orthogonal criteria, each representing a distinct data centric configuration. Beyond taxonomy, this survey examines FGL integration with Pretrained Large Models, showcases realistic applications, and highlights future direction aligned with emerging trends in GML.
format Preprint
id arxiv_https___arxiv_org_abs_2507_16541
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Comprehensive Data-centric Overview of Federated Graph Learning
Wu, Zhengyu
Li, Xunkai
Zhu, Yinlin
Chen, Zekai
Yan, Guochen
Yan, Yanyu
Zhang, Hao
Ai, Yuming
Jin, Xinmo
Li, Rong-Hua
Wang, Guoren
Machine Learning
Artificial Intelligence
Social and Information Networks
In the era of big data applications, Federated Graph Learning (FGL) has emerged as a prominent solution that reconcile the tradeoff between optimizing the collective intelligence between decentralized datasets holders and preserving sensitive information to maximum. Existing FGL surveys have contributed meaningfully but largely focus on integrating Federated Learning (FL) and Graph Machine Learning (GML), resulting in early stage taxonomies that emphasis on methodology and simulated scenarios. Notably, a data centric perspective, which systematically examines FGL methods through the lens of data properties and usage, remains unadapted to reorganize FGL research, yet it is critical to assess how FGL studies manage to tackle data centric constraints to enhance model performances. This survey propose a two-level data centric taxonomy: Data Characteristics, which categorizes studies based on the structural and distributional properties of datasets used in FGL, and Data Utilization, which analyzes the training procedures and techniques employed to overcome key data centric challenges. Each taxonomy level is defined by three orthogonal criteria, each representing a distinct data centric configuration. Beyond taxonomy, this survey examines FGL integration with Pretrained Large Models, showcases realistic applications, and highlights future direction aligned with emerging trends in GML.
title A Comprehensive Data-centric Overview of Federated Graph Learning
topic Machine Learning
Artificial Intelligence
Social and Information Networks
url https://arxiv.org/abs/2507.16541