NeurIPS2022
Capturing Graphs with Hypo-Elliptic Diffusions
Csaba Tóth, Darrick Lee, Celia Hacker, Harald Oberhauser
被引用 14 次
摘要
Convolutional layers within graph neural networks operate by aggregating information about local neighbourhood structures; one common way to encode such substructures is through random walks. The distribution of these random walks evolves according to a diffusion equation defined using the graph Laplacian. We extend this approach by leveraging classic mathematical results about hypo-elliptic diffusions. This results in a novel tensor-valued graph operator, which we call the hypo-elliptic graph Laplacian. We provide theoretical guarantees and efficient low-rank approximation algorithms. In particular, this gives a structured approach to capture long-range dependencies on graphs that is robust to pooling. Besides the attractive theoretical properties, our experiments show that this method competes with graph transformers on datasets requiring long-range reasoning but scales only linearly in the number of edges as opposed to quadratically in nodes. * Equal contribution; order determined by random coin flip. 1 An algebra is a vector space where one can multiply elements; e.g. the set of n × n matrices with matrix multiplication. This multiplication can be non-commutative; e.g. A • B = B • A for general matrices A, B.