Epidemic propagation on networks represents an important departure from traditional mass-action models. However, the high-dimensionality of the exact models poses a challenge to both mathematical analysis and parameter inference. By using mean-field models, such as the pairwise model (PWM), the high-dimensionality becomes tractable. While such models have been used extensively for model analysis, there is limited work in the context of statistical inference. In this paper, we explore the extent to which the PWM with the susceptible-infected-recovered (SIR) epidemic can be used to infer disease- and network-related parameters. Data from an epidemics can be loosely categorised as being population level, e.g., daily new cases, or individual le...
Abstract Countries around the world implement nonpharmaceutical interventions (NPIs) to mitigate the...
Networks and the epidemiology of directly transmitted infectious diseases are fundamentally linked. ...
The massive employment of computational models in network epidemiology calls for the development of ...
One of the motivating questions for many epidemiologists is “how quickly or widely will a particular...
Modelling epidemics on networks represents an important departure from classical compartmental model...
Using the continuous-time susceptible-infected-susceptible (SIS) model on networks, we investigate t...
The relating of deterministic, mean-field models into network models, where epidemic spread occurs b...
The stochastic nature of epidemic dynamics on a network makes their direct study very challenging. O...
One major aim of statistics is to systematically study outcomes of interest in a population by obser...
Countries around the world implement nonpharmaceutical interventions (NPIs) to mitigate the spread o...
Abstract In this article, we develop two independent and new approaches to model epidemic spread in ...
While the foundations of modern epidemiology are based upon deterministic models with homogeneous mi...
ABSTRACT. In this article, we estimate the parameters of a simple random network and a stochas-tic e...
Realistic human contact networks capable of spreading infectious disease, for example studied in soc...
The massive employment of computational models in network epidemiology calls for the development of ...
Abstract Countries around the world implement nonpharmaceutical interventions (NPIs) to mitigate the...
Networks and the epidemiology of directly transmitted infectious diseases are fundamentally linked. ...
The massive employment of computational models in network epidemiology calls for the development of ...
One of the motivating questions for many epidemiologists is “how quickly or widely will a particular...
Modelling epidemics on networks represents an important departure from classical compartmental model...
Using the continuous-time susceptible-infected-susceptible (SIS) model on networks, we investigate t...
The relating of deterministic, mean-field models into network models, where epidemic spread occurs b...
The stochastic nature of epidemic dynamics on a network makes their direct study very challenging. O...
One major aim of statistics is to systematically study outcomes of interest in a population by obser...
Countries around the world implement nonpharmaceutical interventions (NPIs) to mitigate the spread o...
Abstract In this article, we develop two independent and new approaches to model epidemic spread in ...
While the foundations of modern epidemiology are based upon deterministic models with homogeneous mi...
ABSTRACT. In this article, we estimate the parameters of a simple random network and a stochas-tic e...
Realistic human contact networks capable of spreading infectious disease, for example studied in soc...
The massive employment of computational models in network epidemiology calls for the development of ...
Abstract Countries around the world implement nonpharmaceutical interventions (NPIs) to mitigate the...
Networks and the epidemiology of directly transmitted infectious diseases are fundamentally linked. ...
The massive employment of computational models in network epidemiology calls for the development of ...