Convergence of Message Passing Graph Neural Networks with Generic Aggregation On Large Random Graphs
Abstract
We study the convergence of message passing graph neural networks on random graph models to their continuous counterpart as the number of nodes tends to infinity. Until now, this convergence was only known for architectures with aggregation functions in the form of normalized means, or, equivalently, of an application of classical operators like the adjacency matrix or the graph Laplacian. We extend such results to a large class of aggregation functions, that encompasses all classically used message passing graph neural networks, such as attention-based message passing, max convolutional message passing, (degree-normalized) convolutional message passing, or moment-based aggregation message passing. Under mild assumptions, we give non-asymptotic bounds with high probability to quantify this convergence. Our main result is based on the McDiarmid inequality. Interestingly, this result does not apply to the case where the aggregation is a coordinate-wise maximum. We treat this case separately and obtain a different convergence rate.
- Publication:
-
arXiv e-prints
- Pub Date:
- April 2023
- DOI:
- 10.48550/arXiv.2304.11140
- arXiv:
- arXiv:2304.11140
- Bibcode:
- 2023arXiv230411140C
- Keywords:
-
- Statistics - Machine Learning;
- Computer Science - Machine Learning