Graph Distillation with Eigenbasis Matching
The increasing amount of graph data places requirements on the efficient training of graph neural networks (GNNs). The emerging graph distillation (GD) tackles this challenge by distilling a small synthetic graph to replace the real large graph, ensuring GNNs trained on real and synthetic graphs exh...
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Zusammenfassung: | The increasing amount of graph data places requirements on the efficient
training of graph neural networks (GNNs). The emerging graph distillation (GD)
tackles this challenge by distilling a small synthetic graph to replace the
real large graph, ensuring GNNs trained on real and synthetic graphs exhibit
comparable performance. However, existing methods rely on GNN-related
information as supervision, including gradients, representations, and
trajectories, which have two limitations. First, GNNs can affect the spectrum
(i.e., eigenvalues) of the real graph, causing spectrum bias in the synthetic
graph. Second, the variety of GNN architectures leads to the creation of
different synthetic graphs, requiring traversal to obtain optimal performance.
To tackle these issues, we propose Graph Distillation with Eigenbasis Matching
(GDEM), which aligns the eigenbasis and node features of real and synthetic
graphs. Meanwhile, it directly replicates the spectrum of the real graph and
thus prevents the influence of GNNs. Moreover, we design a discrimination
constraint to balance the effectiveness and generalization of GDEM.
Theoretically, the synthetic graphs distilled by GDEM are restricted spectral
approximations of the real graphs. Extensive experiments demonstrate that GDEM
outperforms state-of-the-art GD methods with powerful cross-architecture
generalization ability and significant distillation efficiency. Our code is
available at https://github.com/liuyang-tian/GDEM. |
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DOI: | 10.48550/arxiv.2310.09202 |