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3 months ago

Sign and Basis Invariant Networks for Spectral Graph Representation Learning

Derek Lim Joshua Robinson Lingxiao Zhao Tess Smidt Suvrit Sra Haggai Maron Stefanie Jegelka

Sign and Basis Invariant Networks for Spectral Graph Representation Learning

Abstract

We introduce SignNet and BasisNet -- new neural architectures that are invariant to two key symmetries displayed by eigenvectors: (i) sign flips, since if $v$ is an eigenvector then so is $-v$; and (ii) more general basis symmetries, which occur in higher dimensional eigenspaces with infinitely many choices of basis eigenvectors. We prove that under certain conditions our networks are universal, i.e., they can approximate any continuous function of eigenvectors with the desired invariances. When used with Laplacian eigenvectors, our networks are provably more expressive than existing spectral methods on graphs; for instance, they subsume all spectral graph convolutions, certain spectral graph invariants, and previously proposed graph positional encodings as special cases. Experiments show that our networks significantly outperform existing baselines on molecular graph regression, learning expressive graph representations, and learning neural fields on triangle meshes. Our code is available at https://github.com/cptq/SignNet-BasisNet .

Code Repositories

tum-vision/intrinsic-neural-fields
pytorch
Mentioned in GitHub
cptq/SignNet-BasisNet
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
graph-regression-on-zinc-500kPNA-SignNet
MAE: 0.084
graph-regression-on-zinc-fullSignNet
Test MAE: 0.024±0.003

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Sign and Basis Invariant Networks for Spectral Graph Representation Learning | Papers | HyperAI