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Main Authors: Borgs, Christian, Huang, Karissa, Ikeokwu, Christian
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.07097
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author Borgs, Christian
Huang, Karissa
Ikeokwu, Christian
author_facet Borgs, Christian
Huang, Karissa
Ikeokwu, Christian
contents In this paper, we study the dynamics of the susceptible-infected-recovered (SIR) model on a network with community structure, namely the stochastic block model (SBM). As usual, the SIR model is a stochastic model for an epidemic where infected vertices infect susceptible neighbors at some rate $η$ and recover at rate $γ$, and the SBM is a random graph model where vertices are partitioned into a finite number of communities. The connection probability between two vertices depends on their community affiliation, here scaled so that the average degrees have a finite limit as the network grows. We prove laws of large numbers (LLN) for the epidemic's trajectory to a system of ordinary differential equations over any time horizon (finite or infinite), including in particular a LLN for the final size of the infection. Our proofs rely on two main ingredients: (i) a new coupling of the SIR epidemic and the randomness of the SBM, revealing a vector-valued random variable that drives the epidemic (related to what is usually called the ``force of the infection'' via a linear transformation), and (ii) a novel technique for analyzing the limiting behavior of the infinite time horizon for the infection, using the fact that once the infection passes the herd immunity threshold it dies out quickly and has a negligible impact on the overall size of the infection.
format Preprint
id arxiv_https___arxiv_org_abs_2410_07097
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Law of Large Numbers for SIR on the Stochastic Block Model: A Proof via Herd Immunity
Borgs, Christian
Huang, Karissa
Ikeokwu, Christian
Probability
Social and Information Networks
In this paper, we study the dynamics of the susceptible-infected-recovered (SIR) model on a network with community structure, namely the stochastic block model (SBM). As usual, the SIR model is a stochastic model for an epidemic where infected vertices infect susceptible neighbors at some rate $η$ and recover at rate $γ$, and the SBM is a random graph model where vertices are partitioned into a finite number of communities. The connection probability between two vertices depends on their community affiliation, here scaled so that the average degrees have a finite limit as the network grows. We prove laws of large numbers (LLN) for the epidemic's trajectory to a system of ordinary differential equations over any time horizon (finite or infinite), including in particular a LLN for the final size of the infection. Our proofs rely on two main ingredients: (i) a new coupling of the SIR epidemic and the randomness of the SBM, revealing a vector-valued random variable that drives the epidemic (related to what is usually called the ``force of the infection'' via a linear transformation), and (ii) a novel technique for analyzing the limiting behavior of the infinite time horizon for the infection, using the fact that once the infection passes the herd immunity threshold it dies out quickly and has a negligible impact on the overall size of the infection.
title A Law of Large Numbers for SIR on the Stochastic Block Model: A Proof via Herd Immunity
topic Probability
Social and Information Networks
url https://arxiv.org/abs/2410.07097