Toward a universal foundation model for graph-structured data
Sakib Mostafa, Lei Xing, and Md. Tauhidul Islam

TL;DR
This paper introduces a transferable graph foundation model that leverages structural prompts to enable zero-shot and few-shot learning across diverse biomedical graph datasets.
Contribution
The authors propose a novel graph foundation model using structural prompts and a message-passing backbone, enabling transferability and generalization across various biomedical graphs.
Findings
Model matches or exceeds supervised baselines on benchmarks.
Achieves 95.5% ROC-AUC on SagePPI with minimal fine-tuning.
Demonstrates superior zero-shot and few-shot generalization.
Abstract
Graphs are a central representation in biomedical research, capturing molecular interaction networks, gene regulatory circuits, cell--cell communication maps, and knowledge graphs. Despite their importance, currently there is not a broadly reusable foundation model available for graph analysis comparable to those that have transformed language and vision. Existing graph neural networks are typically trained on a single dataset and learn representations specific only to that graph's node features, topology, and label space, limiting their ability to transfer across domains. This lack of generalization is particularly problematic in biology and medicine, where networks vary substantially across cohorts, assays, and institutions. Here we introduce a graph foundation model designed to learn transferable structural representations that are not specific to specific node identities or feature…
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