Graph neural networks and non-commuting operators
Mauricio Velasco, Kaiying O'Hare, Bernardo Rychtenberg and, Soledad Villar

TL;DR
This paper extends graph neural networks to handle multiple non-commuting graph operators, developing a mathematical framework for their stability and transferability, with theoretical guarantees and experimental validation.
Contribution
It introduces graph-tuple neural networks (GtNNs) with non-commuting operators, providing a new theoretical foundation for their stability and transferability.
Findings
Proves universal transferability of GtNNs on convergent graph sequences
Extends transferability theorems from GNNs to multiple graphs
Provides a training procedure ensuring model stability
Abstract
Graph neural networks (GNNs) provide state-of-the-art results in a wide variety of tasks which typically involve predicting features at the vertices of a graph. They are built from layers of graph convolutions which serve as a powerful inductive bias for describing the flow of information among the vertices. Often, more than one data modality is available. This work considers a setting in which several graphs have the same vertex set and a common vertex-level learning task. This generalizes standard GNN models to GNNs with several graph operators that do not commute. We may call this model graph-tuple neural networks (GtNN). In this work, we develop the mathematical theory to address the stability and transferability of GtNNs using properties of non-commuting non-expansive operators. We develop a limit theory of graphon-tuple neural networks and use it to prove a universal…
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Code & Models
Videos
Taxonomy
TopicsNeural Networks and Applications
MethodsSparse Evolutionary Training
