RiemannGFM: Learning a Graph Foundation Model from Riemannian Geometry
Li Sun, Zhenhao Huang, Suyang Zhou, Qiqi Wan, Hao Peng, Philip Yu

TL;DR
This paper introduces RiemannGFM, a universal graph foundation model that leverages Riemannian geometry and structural vocabulary to improve cross-domain transferability of graph representations.
Contribution
It proposes a novel structural vocabulary of trees and cycles and integrates it with Riemannian geometry to pretrain a universal graph model beyond language-specific approaches.
Findings
Effective on diverse real-world graphs
Outperforms existing graph models in transferability
Demonstrates the utility of Riemannian geometry in graph learning
Abstract
The foundation model has heralded a new era in artificial intelligence, pretraining a single model to offer cross-domain transferability on different datasets. Graph neural networks excel at learning graph data, the omnipresent non-Euclidean structure, but often lack the generalization capacity. Hence, graph foundation model is drawing increasing attention, and recent efforts have been made to leverage Large Language Models. On the one hand, existing studies primarily focus on text-attributed graphs, while a wider range of real graphs do not contain fruitful textual attributes. On the other hand, the sequential graph description tailored for the Large Language Model neglects the structural complexity, which is a predominant characteristic of the graph. Such limitations motivate an important question: Can we go beyond Large Language Models, and pretrain a universal model to learn the…
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Taxonomy
TopicsGraph Theory and Algorithms · Geological Modeling and Analysis · Constraint Satisfaction and Optimization
MethodsFocus
