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Main Authors: Wang, Yuxiang, Fan, Wenqi, Wang, Suhang, Ma, Yao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.09363
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author Wang, Yuxiang
Fan, Wenqi
Wang, Suhang
Ma, Yao
author_facet Wang, Yuxiang
Fan, Wenqi
Wang, Suhang
Ma, Yao
contents In recent years, Graph Foundation Models (GFMs) have gained significant attention for their potential to generalize across diverse graph domains and tasks. Some works focus on Domain-Specific GFMs, which are designed to address a variety of tasks within a specific domain, while others aim to create General-Purpose GFMs that extend the capabilities of domain-specific models to multiple domains. Regardless of the type, transferability is crucial for applying GFMs across different domains and tasks. However, achieving strong transferability is a major challenge due to the structural, feature, and distributional variations in graph data. To date, there has been no systematic research examining and analyzing GFMs from the perspective of transferability. To bridge the gap, we present the first comprehensive taxonomy that categorizes and analyzes existing GFMs through the lens of transferability, structuring GFMs around their application scope (domain-specific vs. general-purpose) and their approaches to knowledge acquisition and transfer. We provide a structured perspective on current progress and identify potential pathways for advancing GFM generalization across diverse graph datasets and tasks. We aims to shed light on the current landscape of GFMs and inspire future research directions in GFM development.
format Preprint
id arxiv_https___arxiv_org_abs_2503_09363
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Towards Graph Foundation Models: A Transferability Perspective
Wang, Yuxiang
Fan, Wenqi
Wang, Suhang
Ma, Yao
Machine Learning
In recent years, Graph Foundation Models (GFMs) have gained significant attention for their potential to generalize across diverse graph domains and tasks. Some works focus on Domain-Specific GFMs, which are designed to address a variety of tasks within a specific domain, while others aim to create General-Purpose GFMs that extend the capabilities of domain-specific models to multiple domains. Regardless of the type, transferability is crucial for applying GFMs across different domains and tasks. However, achieving strong transferability is a major challenge due to the structural, feature, and distributional variations in graph data. To date, there has been no systematic research examining and analyzing GFMs from the perspective of transferability. To bridge the gap, we present the first comprehensive taxonomy that categorizes and analyzes existing GFMs through the lens of transferability, structuring GFMs around their application scope (domain-specific vs. general-purpose) and their approaches to knowledge acquisition and transfer. We provide a structured perspective on current progress and identify potential pathways for advancing GFM generalization across diverse graph datasets and tasks. We aims to shed light on the current landscape of GFMs and inspire future research directions in GFM development.
title Towards Graph Foundation Models: A Transferability Perspective
topic Machine Learning
url https://arxiv.org/abs/2503.09363