21 pages, 5 figuresWe present a new Bayesian inference method for compartmental models that takes into account the intrinsic stochasticity of the process. We show how to formulate a SIR-type Markov jump process as the solution of a stochastic differential equation with respect to a Poisson Random Measure (PRM), and how to simulate the process trajectory deterministically from a parameter value and a PRM realisation. This forms the basis of our Data Augmented MCMC, which consists in augmenting parameter space with the unobserved PRM value. The resulting simple Metropolis-Hastings sampler acts as an efficient simulation-based inference method, that can easily be transferred from model to model. Compared with a recent Data Augmentation method ...
Acrucial practical advantage of infectious diseases modelling as a public health tool lies in its ap...
We present a novel way to model the spread of a multi-strain epidemic in a population as well as an ...
Stochastic epidemic models provide an interpretable probabilistic description of the spread of a dis...
We present a new Bayesian inference method for compartmental models that takes into account the intr...
Stochastic epidemic models describe the dynamics of an epidemic as a disease spreads through a popul...
This thesis investigates the representation of a stochastic epidemic process as a directed random gr...
Epidemiological forecasts are beset by uncertainties about the underlying epidemiological processes,...
We consider the case of performing Bayesian inference for stochastic epidemic compartment models, us...
Epidemiological forecasts are beset by uncertainties about the underlying epidemiological processes,...
Addressing the challenge of scaling-up epidemiological inference to complex and heterogeneous models...
From ancient times to the modern day, public health has been an area of great interest. Studies on t...
peer reviewedWe consider State Space Models (SSMs) as Discrete Time Markov Chains (DTMC) to describ...
Abstract: We consider continuous-time stochastic compartmental models that can be applied in veterin...
We describe a stochastic model based on a branching process for analyzing surveillance data of infec...
Inference for epidemic parameters can be challenging, in part due to data that are intrinsically sto...
Acrucial practical advantage of infectious diseases modelling as a public health tool lies in its ap...
We present a novel way to model the spread of a multi-strain epidemic in a population as well as an ...
Stochastic epidemic models provide an interpretable probabilistic description of the spread of a dis...
We present a new Bayesian inference method for compartmental models that takes into account the intr...
Stochastic epidemic models describe the dynamics of an epidemic as a disease spreads through a popul...
This thesis investigates the representation of a stochastic epidemic process as a directed random gr...
Epidemiological forecasts are beset by uncertainties about the underlying epidemiological processes,...
We consider the case of performing Bayesian inference for stochastic epidemic compartment models, us...
Epidemiological forecasts are beset by uncertainties about the underlying epidemiological processes,...
Addressing the challenge of scaling-up epidemiological inference to complex and heterogeneous models...
From ancient times to the modern day, public health has been an area of great interest. Studies on t...
peer reviewedWe consider State Space Models (SSMs) as Discrete Time Markov Chains (DTMC) to describ...
Abstract: We consider continuous-time stochastic compartmental models that can be applied in veterin...
We describe a stochastic model based on a branching process for analyzing surveillance data of infec...
Inference for epidemic parameters can be challenging, in part due to data that are intrinsically sto...
Acrucial practical advantage of infectious diseases modelling as a public health tool lies in its ap...
We present a novel way to model the spread of a multi-strain epidemic in a population as well as an ...
Stochastic epidemic models provide an interpretable probabilistic description of the spread of a dis...