Random walks on graphs are often used to analyse and predict epidemic spreads and to investigate possible control actions to mitigate them. In this study, we first show that models based on random walks with a single stochastic agent (such as Google’s popular PageRank) may provide a poor description of certain features of epidemic spread: most notably, spreading times. Then, we discuss another Markov chain based method that does reflect the correct mean infection times for the disease to spread between individuals in a network, and we determine a procedure that allows one to compute them efficiently via a sampling strategy. Finally, we present a novel centrality measure based on infection times, and we compare its node ranking properties wi...
We propose a model for epidemic spreading on a finite complex network with a restriction to at most ...
Most studies on susceptible-infected-susceptible epidemics in networks implicitly assume Markovian b...
Dynamics on networks is considered from the perspective of Markov stochastic processes. We partially...
We introduce a new method to efficiently approximate the number of infections resulting from a given...
One way to describe the spread of an infection on a network is by approximating the network by a ran...
Epidemic models are increasingly applied in real-world networks to understand various kinds of diffu...
This thesis considers stochastic epidemic models for the spread of epidemics in structured populatio...
We consider a natural network diffusion process, modeling the spread of information or infectious di...
Local interactions on a graph will lead to global dynamic behaviour. In this thesis we focus on two ...
We consider the problem of finding the graph on which an epidemic cascade spreads, given only the ti...
The Firefighter Problem models the spread of a fire across a network. The usual version of the model...
Conventional epidemic models assume omni-directional contact-based infection. This strongly associat...
The thesis is split into three main chapters. Chapter 1 Micro-modelling: In this chapter, we put our...
One major aim of statistics is to systematically study outcomes of interest in a population by obser...
Abstract In this article, we develop two independent and new approaches to model epidemic spread in ...
We propose a model for epidemic spreading on a finite complex network with a restriction to at most ...
Most studies on susceptible-infected-susceptible epidemics in networks implicitly assume Markovian b...
Dynamics on networks is considered from the perspective of Markov stochastic processes. We partially...
We introduce a new method to efficiently approximate the number of infections resulting from a given...
One way to describe the spread of an infection on a network is by approximating the network by a ran...
Epidemic models are increasingly applied in real-world networks to understand various kinds of diffu...
This thesis considers stochastic epidemic models for the spread of epidemics in structured populatio...
We consider a natural network diffusion process, modeling the spread of information or infectious di...
Local interactions on a graph will lead to global dynamic behaviour. In this thesis we focus on two ...
We consider the problem of finding the graph on which an epidemic cascade spreads, given only the ti...
The Firefighter Problem models the spread of a fire across a network. The usual version of the model...
Conventional epidemic models assume omni-directional contact-based infection. This strongly associat...
The thesis is split into three main chapters. Chapter 1 Micro-modelling: In this chapter, we put our...
One major aim of statistics is to systematically study outcomes of interest in a population by obser...
Abstract In this article, we develop two independent and new approaches to model epidemic spread in ...
We propose a model for epidemic spreading on a finite complex network with a restriction to at most ...
Most studies on susceptible-infected-susceptible epidemics in networks implicitly assume Markovian b...
Dynamics on networks is considered from the perspective of Markov stochastic processes. We partially...