To be able to understand how infectious diseases spread on networks, it is important to understand the network structure itself in the absence of infection. In this text we consider dynamic network models that are inspired by the (static) configuration network. The networks are described by population-level averages such as the fraction of the population with k partners, k = 0, 1, 2, … This means that the bookkeeping contains information about individuals and their partners, but no information about partners of partners. Can we average over the population to obtain information about partners of partners? The answer is ‘it depends’, and this is where the mean field at distance one assumption comes into play. In this text we explain that, yes...
A fundamental challenge of modern infectious disease epidemiology is to quantify the networks of soc...
A fundamental challenge of modern infectious disease epidemiology is to quantify the networks of soc...
This thesis develops and exploits methodology within network science, driven by important applicatio...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
Understanding the scaling of transmission is critical to predicting how infectious diseases will aff...
Understanding the scaling of transmission is critical to predicting how infectious diseases will aff...
Over the last decade considerable research effort has been invested in an attempt to understand the ...
The relating of deterministic, mean-field models into network models, where epidemic spread occurs b...
One major aim of statistics is to systematically study outcomes of interest in a population by obser...
Epidemiological models are used to inform health policy on issues such as target vaccination levels,...
© The Author(s) 2015. This article is published with open access at Springerlink.com Abstract Cluste...
Epidemic propagation on networks represents an important departure from traditional mass-action mode...
Heterogeneity in the number of potentially infectious contacts amongst members of a population incre...
Abstract In this article, we develop two independent and new approaches to model epidemic spread in ...
A fundamental challenge of modern infectious disease epidemiology is to quantify the networks of soc...
A fundamental challenge of modern infectious disease epidemiology is to quantify the networks of soc...
This thesis develops and exploits methodology within network science, driven by important applicatio...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
Understanding the scaling of transmission is critical to predicting how infectious diseases will aff...
Understanding the scaling of transmission is critical to predicting how infectious diseases will aff...
Over the last decade considerable research effort has been invested in an attempt to understand the ...
The relating of deterministic, mean-field models into network models, where epidemic spread occurs b...
One major aim of statistics is to systematically study outcomes of interest in a population by obser...
Epidemiological models are used to inform health policy on issues such as target vaccination levels,...
© The Author(s) 2015. This article is published with open access at Springerlink.com Abstract Cluste...
Epidemic propagation on networks represents an important departure from traditional mass-action mode...
Heterogeneity in the number of potentially infectious contacts amongst members of a population incre...
Abstract In this article, we develop two independent and new approaches to model epidemic spread in ...
A fundamental challenge of modern infectious disease epidemiology is to quantify the networks of soc...
A fundamental challenge of modern infectious disease epidemiology is to quantify the networks of soc...
This thesis develops and exploits methodology within network science, driven by important applicatio...