The vast majority of models for the spread of communicable diseases are parametric in nature and involve underlying assumptions about how the disease spreads through a population. In this article we consider the use of Bayesian nonparametric approaches to analysing data from disease outbreaks. Specifically we focus on methods for estimating the infection process in simple models under the assumption that this process has an explicit time-dependence
We describe a stochastic model based on a branching process for analyzing surveillance data of infec...
Epidemics are often modeled using non-linear dynamical systems observed through partial and noisy da...
Infectious diseases on farms pose both public and animal health risks, so understanding how they spr...
The vast majority of models for the spread of communicable diseases are parametric in nature and inv...
This paper considers novel Bayesian non-parametric methods for stochastic epidemic models. Many stan...
Simulating from and making inference for stochastic epidemic models are key strategies for understan...
Likelihood-based inference for disease outbreak data can be very challenging due to the inherent dep...
Infectious disease transmissionmodels require assumptions about how the pathogen spreads between ind...
Mathematical modelling has become a useful and commonly-used tool in the analysis of infectious dise...
Whether an outbreak of infectious disease is likely to grow or dissipate is determined through the t...
We consider the case of performing Bayesian inference for stochastic epidemic compartment models, us...
Acrucial practical advantage of infectious diseases modelling as a public health tool lies in its ap...
This thesis is divided in two distinct parts. In the First part we are concerned with developing new...
Stochastic epidemic models can offer a vitally important public health tool for understanding and co...
Throughout the course of an epidemic, the rate at which disease spreads varies with behavioral chang...
We describe a stochastic model based on a branching process for analyzing surveillance data of infec...
Epidemics are often modeled using non-linear dynamical systems observed through partial and noisy da...
Infectious diseases on farms pose both public and animal health risks, so understanding how they spr...
The vast majority of models for the spread of communicable diseases are parametric in nature and inv...
This paper considers novel Bayesian non-parametric methods for stochastic epidemic models. Many stan...
Simulating from and making inference for stochastic epidemic models are key strategies for understan...
Likelihood-based inference for disease outbreak data can be very challenging due to the inherent dep...
Infectious disease transmissionmodels require assumptions about how the pathogen spreads between ind...
Mathematical modelling has become a useful and commonly-used tool in the analysis of infectious dise...
Whether an outbreak of infectious disease is likely to grow or dissipate is determined through the t...
We consider the case of performing Bayesian inference for stochastic epidemic compartment models, us...
Acrucial practical advantage of infectious diseases modelling as a public health tool lies in its ap...
This thesis is divided in two distinct parts. In the First part we are concerned with developing new...
Stochastic epidemic models can offer a vitally important public health tool for understanding and co...
Throughout the course of an epidemic, the rate at which disease spreads varies with behavioral chang...
We describe a stochastic model based on a branching process for analyzing surveillance data of infec...
Epidemics are often modeled using non-linear dynamical systems observed through partial and noisy da...
Infectious diseases on farms pose both public and animal health risks, so understanding how they spr...