Epidemics on random intersection graphs

In this paper we consider a model for the spread of a stochastic SIR (Susceptible → Infectious → Recovered) epidemic on a network of individuals described by a random intersection graph. Individuals belong to a random number of cliques, each of random size, and infection can be transmitted between t...

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Main Authors: Ball, Frank G., Sirl, David J., Trapman, Pieter
Format: Article
Published: Institute of Mathematical Statistics 2014
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Online Access:https://eprints.nottingham.ac.uk/34165/
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author Ball, Frank G.
Sirl, David J.
Trapman, Pieter
author_facet Ball, Frank G.
Sirl, David J.
Trapman, Pieter
author_sort Ball, Frank G.
building Nottingham Research Data Repository
collection Online Access
description In this paper we consider a model for the spread of a stochastic SIR (Susceptible → Infectious → Recovered) epidemic on a network of individuals described by a random intersection graph. Individuals belong to a random number of cliques, each of random size, and infection can be transmitted between two individuals if and only if there is a clique they both belong to. Both the clique sizes and the number of cliques an individual belongs to follow mixed Poisson distributions. An infinite-type branching process approximation (with type being given by the length of an individual’s infectious period) for the early stages of an epidemic is developed and made fully rigorous by proving an associated limit theorem as the population size tends to infinity. This leads to a threshold parameter R∗, so that in a large population an epidemic with few initial infectives can give rise to a large outbreak if and only if R∗>1. A functional equation for the survival probability of the approximating infinite-type branching process is determined; if R∗≤1, this equation has no nonzero solution, while if R∗>1, it is shown to have precisely one nonzero solution. A law of large numbers for the size of such a large outbreak is proved by exploiting a single-type branching process that approximates the size of the susceptibility set of a typical individual.
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spelling nottingham-341652020-05-04T20:14:17Z https://eprints.nottingham.ac.uk/34165/ Epidemics on random intersection graphs Ball, Frank G. Sirl, David J. Trapman, Pieter In this paper we consider a model for the spread of a stochastic SIR (Susceptible → Infectious → Recovered) epidemic on a network of individuals described by a random intersection graph. Individuals belong to a random number of cliques, each of random size, and infection can be transmitted between two individuals if and only if there is a clique they both belong to. Both the clique sizes and the number of cliques an individual belongs to follow mixed Poisson distributions. An infinite-type branching process approximation (with type being given by the length of an individual’s infectious period) for the early stages of an epidemic is developed and made fully rigorous by proving an associated limit theorem as the population size tends to infinity. This leads to a threshold parameter R∗, so that in a large population an epidemic with few initial infectives can give rise to a large outbreak if and only if R∗>1. A functional equation for the survival probability of the approximating infinite-type branching process is determined; if R∗≤1, this equation has no nonzero solution, while if R∗>1, it is shown to have precisely one nonzero solution. A law of large numbers for the size of such a large outbreak is proved by exploiting a single-type branching process that approximates the size of the susceptibility set of a typical individual. Institute of Mathematical Statistics 2014-06 Article PeerReviewed Ball, Frank G., Sirl, David J. and Trapman, Pieter (2014) Epidemics on random intersection graphs. Annals of Applied Probability, 24 (3). pp. 1081-1128. ISSN 1050-5164 Epidemic process Random intersection graphs Multi-type branching processes Coupling http://projecteuclid.org/euclid.aoap/1398258096 doi:10.1214/13-AAP942 doi:10.1214/13-AAP942
spellingShingle Epidemic process
Random intersection graphs
Multi-type branching processes
Coupling
Ball, Frank G.
Sirl, David J.
Trapman, Pieter
Epidemics on random intersection graphs
title Epidemics on random intersection graphs
title_full Epidemics on random intersection graphs
title_fullStr Epidemics on random intersection graphs
title_full_unstemmed Epidemics on random intersection graphs
title_short Epidemics on random intersection graphs
title_sort epidemics on random intersection graphs
topic Epidemic process
Random intersection graphs
Multi-type branching processes
Coupling
url https://eprints.nottingham.ac.uk/34165/
https://eprints.nottingham.ac.uk/34165/
https://eprints.nottingham.ac.uk/34165/