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Main Authors: Allmeier, Sebastian, Gast, Nicolas
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.08623
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author Allmeier, Sebastian
Gast, Nicolas
author_facet Allmeier, Sebastian
Gast, Nicolas
contents We consider a system of $N$ particles whose interactions are characterized by a (weighted) graph $G^N$. Each particle is a node of the graph with an internal state. The state changes according to Markovian dynamics that depend on the states and connection to other particles. We study the limiting properties, focusing on the dense graph regime, where the number of neighbors of a given node grows with $N$. We show that when $G^N$ converges to a graphon $G$, the behavior of the system converges to a deterministic limit, the graphon mean field approximation. We obtain convergence rates depending on the system size $N$ and cut-norm distance between $G^N$ and $G$. We apply the results for two subcases: When $G^N$ is a discretization of the graph $G$ with individually weighted edges; when $G^N$ is a random graph obtained through edge sampling from the graphon $G$. In the case of weighted interactions, we obtain a bound of order $O(1/N)$. In the random graph case, the error is of order $O(\sqrt{\log(N)/N})$ with high probability. We illustrate the applicability of our results and the numerical efficiency of the approximation through two examples: a graph-based load-balancing model and a heterogeneous bike-sharing system.
format Preprint
id arxiv_https___arxiv_org_abs_2405_08623
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Accuracy of the Graphon Mean Field Approximation for Interacting Particle Systems
Allmeier, Sebastian
Gast, Nicolas
Probability
We consider a system of $N$ particles whose interactions are characterized by a (weighted) graph $G^N$. Each particle is a node of the graph with an internal state. The state changes according to Markovian dynamics that depend on the states and connection to other particles. We study the limiting properties, focusing on the dense graph regime, where the number of neighbors of a given node grows with $N$. We show that when $G^N$ converges to a graphon $G$, the behavior of the system converges to a deterministic limit, the graphon mean field approximation. We obtain convergence rates depending on the system size $N$ and cut-norm distance between $G^N$ and $G$. We apply the results for two subcases: When $G^N$ is a discretization of the graph $G$ with individually weighted edges; when $G^N$ is a random graph obtained through edge sampling from the graphon $G$. In the case of weighted interactions, we obtain a bound of order $O(1/N)$. In the random graph case, the error is of order $O(\sqrt{\log(N)/N})$ with high probability. We illustrate the applicability of our results and the numerical efficiency of the approximation through two examples: a graph-based load-balancing model and a heterogeneous bike-sharing system.
title Accuracy of the Graphon Mean Field Approximation for Interacting Particle Systems
topic Probability
url https://arxiv.org/abs/2405.08623