In this paper, the rigorous linking of exact stochastic models to mean-field approximations is studied. Using a continuous-time Markov chain, we start from the exact formulation of a simple epidemic model on a certain class of networks, including completely connected and regular random graphs, and rigorously derive the well-known mean-field approximation that is usually justified based on biological hypotheses. We propose a unifying framework that incorporates and discusses the details of two existing proofs and we put forward a new ordinary differential equation (ODE)-based proof. The more well-known proof is based on a first-order partial differential equation approximation, while the other, more technical one, uses Martingale and Semigro...
We propose an approximation framework that unifies and generalizes a number of existing mean-field a...
16th International School on Formal Methods for the Design of Computer, Communication, and Software ...
International audienceMean field approximation is a popular method to study the behaviour of stochas...
In this paper we use comparison theorems from classical ODE theory in order to rigorously show that ...
The rigorous linking of exact stochastic models to mean-field approximations is studied. Starting fr...
Many if not all models of disease transmission on networks can be linked to the exact state-based Ma...
Stochastic epidemic models on networks are inherently high-dimensional and the resulting exact model...
This paper introduces a novel extension of the edge-based compartmental model to epidemics where the...
Deterministic limit of a class of continuous time Markov chains is considered based purely on differ...
The stochastic nature of epidemic dynamics on a network makes their direct study very challenging. O...
An adaptive network model using SIS epidemic propagation with link-type-dependent link activation an...
We present the generalized mean-field and pairwise models for non-Markovian epidemics on networks wi...
This thesis is concerned with modelling the spread of diseases amongst host populations and the epid...
BACKGROUND: Many models used in theoretical ecology, or mathematical epidemiology are stochastic, an...
Low dimensional ODE approximations that capture the main characteristics of SIS-type epidemic propag...
We propose an approximation framework that unifies and generalizes a number of existing mean-field a...
16th International School on Formal Methods for the Design of Computer, Communication, and Software ...
International audienceMean field approximation is a popular method to study the behaviour of stochas...
In this paper we use comparison theorems from classical ODE theory in order to rigorously show that ...
The rigorous linking of exact stochastic models to mean-field approximations is studied. Starting fr...
Many if not all models of disease transmission on networks can be linked to the exact state-based Ma...
Stochastic epidemic models on networks are inherently high-dimensional and the resulting exact model...
This paper introduces a novel extension of the edge-based compartmental model to epidemics where the...
Deterministic limit of a class of continuous time Markov chains is considered based purely on differ...
The stochastic nature of epidemic dynamics on a network makes their direct study very challenging. O...
An adaptive network model using SIS epidemic propagation with link-type-dependent link activation an...
We present the generalized mean-field and pairwise models for non-Markovian epidemics on networks wi...
This thesis is concerned with modelling the spread of diseases amongst host populations and the epid...
BACKGROUND: Many models used in theoretical ecology, or mathematical epidemiology are stochastic, an...
Low dimensional ODE approximations that capture the main characteristics of SIS-type epidemic propag...
We propose an approximation framework that unifies and generalizes a number of existing mean-field a...
16th International School on Formal Methods for the Design of Computer, Communication, and Software ...
International audienceMean field approximation is a popular method to study the behaviour of stochas...