Models that deal with the individual level of populations have shown the importance of stochasticity in ecology, epidemiology and evolution. An increasingly common approach to studying these models is through stochastic (event-driven) simulation. One striking disadvantage of this approach is the need for a large number of replicates to determine the range of expected behaviour. Here, for a class of stochastic models called Markov processes, we present results that overcome this difficulty and provide valuable insights, but which have been largely ignored by applied researchers. For these models, the so-called Kolmogorov forward equation (also called the ensemble or master equation) allows one to simultaneously consider the probability of ea...
In this thesis several problems concerning the stochastic modelling of emerging infections are consi...
abstract: Mathematical modeling of infectious diseases can help public health officials to make deci...
This chapter deals with stochastic models for structured populations whose dynamics depend crucially...
Models that deal with the individual level of populations have shown the importance of stochasticity...
Stochastic ecological and epidemiological models are now routinely used to inform management and dec...
Mathematical modeling is a powerful tool used to study the dynamical processes of disease networks. ...
Models of exponential growth, logistic growth and epidemics are common applications in undergraduate...
Some mathematical methods for formulation and numerical simulation of stochastic epidemic models are...
Introduction Recent research has revealed a surge in the application of Stochastic Differential Equ...
Stochastic models for competing clonotypes of T cells by multivariate, continuous-time, discrete sta...
We develop a simulation method for Markov Jump processes with finite time steps based in a quasiline...
In a recent paper KhudaBukhsh et al., we showed that solutions to Ordinary Differential Equations (O...
International audienceIn the context of biology and ecology, stochastic differential equations (SDE)...
The processes by which disease spreads in a population of individuals are inherently stochastic. The...
We present a methodology to connect an ordinary differential equation (ODE) model of interacting ent...
In this thesis several problems concerning the stochastic modelling of emerging infections are consi...
abstract: Mathematical modeling of infectious diseases can help public health officials to make deci...
This chapter deals with stochastic models for structured populations whose dynamics depend crucially...
Models that deal with the individual level of populations have shown the importance of stochasticity...
Stochastic ecological and epidemiological models are now routinely used to inform management and dec...
Mathematical modeling is a powerful tool used to study the dynamical processes of disease networks. ...
Models of exponential growth, logistic growth and epidemics are common applications in undergraduate...
Some mathematical methods for formulation and numerical simulation of stochastic epidemic models are...
Introduction Recent research has revealed a surge in the application of Stochastic Differential Equ...
Stochastic models for competing clonotypes of T cells by multivariate, continuous-time, discrete sta...
We develop a simulation method for Markov Jump processes with finite time steps based in a quasiline...
In a recent paper KhudaBukhsh et al., we showed that solutions to Ordinary Differential Equations (O...
International audienceIn the context of biology and ecology, stochastic differential equations (SDE)...
The processes by which disease spreads in a population of individuals are inherently stochastic. The...
We present a methodology to connect an ordinary differential equation (ODE) model of interacting ent...
In this thesis several problems concerning the stochastic modelling of emerging infections are consi...
abstract: Mathematical modeling of infectious diseases can help public health officials to make deci...
This chapter deals with stochastic models for structured populations whose dynamics depend crucially...