TL;DR
NodePFN is a universal node classification method that learns from synthetic graphs to generalize across diverse real-world graphs without graph-specific training.
Contribution
Introduces NodePFN, a novel approach that trains on synthetic graphs to enable universal node classification across arbitrary graphs without additional training.
Findings
Achieves 71.27% average accuracy on 23 benchmarks.
Effectively models diverse graph properties through synthetic data.
Demonstrates strong generalization without graph-specific training.
Abstract
One of the most challenging problems in graph machine learning is generalizing across graphs with diverse properties. Graph neural networks (GNNs) face a fundamental limitation: they require separate training for each new graph, preventing universal generalization across diverse graph datasets. A critical challenge facing GNNs lies in their reliance on labeled training data for each individual graph, a requirement that hinders the capacity for universal node classification due to the heterogeneity inherent in graphs -- differences in homophily levels, community structures, and feature distributions across datasets. Inspired by the success of large language models (LLMs) that achieve in-context learning through massive-scale pre-training on diverse datasets, we introduce NodePFN. This universal node classification method generalizes to arbitrary graphs without graph-specific training.…
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