By generating the specifics of a network structure only when needed (on-the-fly), we derive a simple stochastic process that exactly models the time evolution of susceptible-infectious dynamics on finite-size networks. The small number of dynamical variables of this birth-deathMarkov process greatly simplifies analytical calculations. We show how a dual analytical description, treating large scale epidemics with a Gaussian approximation and small outbreaks with a branching process, provides an accurate approximation of the distribution even for rather small networks. The approach also offers important computational advantages and generalizes to a vast class of systems
This textbook provides an exciting new addition to the area of network science featuring a stronger ...
In this paper we present a model describing susceptible-infected-susceptible-type epidemics spreadin...
Analytical description of propagation phenomena on random networks has flourished in recent years, y...
By generating the specifics of a network structure only when needed (on-the-fly), we derive a simple...
This thesis considers stochastic epidemic models for the spread of epidemics in structured populatio...
Mathematical models of infectious diseases, which are in principle analytically tractable, use two g...
Master's thesis in Mathematics and PhysicsThe spread of a virus or the outbreak of an epidemic are n...
Dynamics on networks is considered from the perspective of Markov stochastic processes. We partially...
Epidemic processes are common out-of-equilibrium phenomena of broad interdisciplinary interest. In ...
Stochastic epidemic models on networks are inherently high-dimensional and the resulting exact model...
This thesis is concerned with modelling the spread of diseases amongst host populations and the epid...
Local interactions on a graph will lead to global dynamic behaviour. In this thesis we focus on two ...
The dynamics of contact networks and epidemics of infectious diseases often occur on comparable time...
AbstractWe derive a combinatorial stochastic process for the evolution of the transmission tree over...
We propose a model for epidemic spreading on a finite complex network with a restriction to at most ...
This textbook provides an exciting new addition to the area of network science featuring a stronger ...
In this paper we present a model describing susceptible-infected-susceptible-type epidemics spreadin...
Analytical description of propagation phenomena on random networks has flourished in recent years, y...
By generating the specifics of a network structure only when needed (on-the-fly), we derive a simple...
This thesis considers stochastic epidemic models for the spread of epidemics in structured populatio...
Mathematical models of infectious diseases, which are in principle analytically tractable, use two g...
Master's thesis in Mathematics and PhysicsThe spread of a virus or the outbreak of an epidemic are n...
Dynamics on networks is considered from the perspective of Markov stochastic processes. We partially...
Epidemic processes are common out-of-equilibrium phenomena of broad interdisciplinary interest. In ...
Stochastic epidemic models on networks are inherently high-dimensional and the resulting exact model...
This thesis is concerned with modelling the spread of diseases amongst host populations and the epid...
Local interactions on a graph will lead to global dynamic behaviour. In this thesis we focus on two ...
The dynamics of contact networks and epidemics of infectious diseases often occur on comparable time...
AbstractWe derive a combinatorial stochastic process for the evolution of the transmission tree over...
We propose a model for epidemic spreading on a finite complex network with a restriction to at most ...
This textbook provides an exciting new addition to the area of network science featuring a stronger ...
In this paper we present a model describing susceptible-infected-susceptible-type epidemics spreadin...
Analytical description of propagation phenomena on random networks has flourished in recent years, y...