A charge-preserving method for solving graph neural diffusion networks

Risultato della ricerca: Contributo su rivistaArticolo in rivistapeer review

Abstract

The aim of this paper is to give a systematic mathematical interpretation of the diffusion problem on which Graph Neural Networks (GNNs) models are based. The starting point of our approach is a dissipative functional leading to dynamical equations which allows us to study the symmetries of the model. We provide a short review of graph theory and its relation with network σ-models adapted to our analysis. We discuss the conserved charges and provide a charge-preserving numerical method for solving the dynamical equations. In any dynamical system and also in GRAph Neural Diffusion (GRAND), knowing the charge values and their conservation along the evolution flow could provide a way to understand how GNNs and other networks work with their learning capabilities.

Lingua originaleInglese
Numero di articolo108392
RivistaCommunications in Nonlinear Science and Numerical Simulation
Volume140
DOI
Stato di pubblicazionePubblicato - gen 2025

Fingerprint

Entra nei temi di ricerca di 'A charge-preserving method for solving graph neural diffusion networks'. Insieme formano una fingerprint unica.

Cita questo