peer-reviewedContinuous-time Markov process models of contagions are widely studied, not least because of their utility in predicting the evolution of real-world contagions and in formulating control measures. It is often the case, however, that discrete-time approaches are employed to analyze such models or to simulate them numerically. In such cases, time is discretized into uniform steps and transition rates between states are replaced by transition probabilities. In this paper, we illustrate potential limitations to this approach. We show how discretizing time leads to a restriction on the values of the model parameters that can accurately be studied. We examine numerical simulation schemes employed in the literature, showing how synchr...
The majority of research on epidemics relies on models which are formulated in continuous-time. Howe...
We consider a continuous-time Markov process on a large continuous or discrete state space. The proc...
Most epidemic spreading models assume memoryless systems and statistically independent infections. N...
Continuous-time Markov process models of contagions are widely studied, not least because of their u...
Continuous-time Markov processes with a finite state space can be used to model countless real world...
Understanding the dynamics of spread of infectious diseases between individuals is essential for for...
Waiting times between two consecutive infection and recovery events in spreading processes are often...
Continuous time Markov chains are often used in the literature to model the dynamics of a system wit...
AbstractUnderstanding the dynamics of spread of infectious diseases between individuals is essential...
International audienceStochastic simulations are one of the cornerstones of the analysis of dynamica...
A continuous-time epidemic model with immigration of infectives is introduced. Systems of difference...
In this paper, the aim is to study similarities and differences between a continuous-time Markov cha...
We present the derivation of the continuous-time equations governing the limit dynamics of discrete-...
Stochastic simulations are one of the cornerstones of the analysis of dynamical processes on complex...
In this paper we propose a continuous-time Markov chain to describe the spread of an infective and n...
The majority of research on epidemics relies on models which are formulated in continuous-time. Howe...
We consider a continuous-time Markov process on a large continuous or discrete state space. The proc...
Most epidemic spreading models assume memoryless systems and statistically independent infections. N...
Continuous-time Markov process models of contagions are widely studied, not least because of their u...
Continuous-time Markov processes with a finite state space can be used to model countless real world...
Understanding the dynamics of spread of infectious diseases between individuals is essential for for...
Waiting times between two consecutive infection and recovery events in spreading processes are often...
Continuous time Markov chains are often used in the literature to model the dynamics of a system wit...
AbstractUnderstanding the dynamics of spread of infectious diseases between individuals is essential...
International audienceStochastic simulations are one of the cornerstones of the analysis of dynamica...
A continuous-time epidemic model with immigration of infectives is introduced. Systems of difference...
In this paper, the aim is to study similarities and differences between a continuous-time Markov cha...
We present the derivation of the continuous-time equations governing the limit dynamics of discrete-...
Stochastic simulations are one of the cornerstones of the analysis of dynamical processes on complex...
In this paper we propose a continuous-time Markov chain to describe the spread of an infective and n...
The majority of research on epidemics relies on models which are formulated in continuous-time. Howe...
We consider a continuous-time Markov process on a large continuous or discrete state space. The proc...
Most epidemic spreading models assume memoryless systems and statistically independent infections. N...