Using the continuous-time susceptible-infected-susceptible (SIS) model on networks, we investigate the problem of inferring the class of the underlying network when epidemic data is only available at population-level (i.e., the number of infected individuals at a finite set of discrete times of a single realisation of the epidemic), the only information likely to be available in real world settings. To tackle this, epidemics on networks are approximated by a Birth-and-Death process which keeps track of the number of infected nodes at population level. The rates of this surrogate model encode both the structure of the underlying network and disease dynamics. We use extensive simulations over Regular, Erdős–Rényi and Barabási–Albert networks ...
Epidemic models are increasingly applied in real-world networks to understand various kinds of diffu...
Network-based infectious disease models have been highly effective in elucidating the role of contac...
In this PhD dissertation, we study epidemics on networks of contacts through the lens of statistical...
We predict the future course of ongoing susceptible-infected-susceptible (SIS) epidemics on regular,...
One of the motivating questions for many epidemiologists is “how quickly or widely will a particular...
Epidemic propagation on networks represents an important departure from traditional mass-action mode...
Exact network reconstruction from observations of the SIS process in discrete time would be very use...
The field of epidemiology encompasses a broad class of spreading phenomena, ranging from the seasona...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
A significant amount of effort has been directed at understanding how the structure of a contact net...
Epidemic models are increasingly applied in real-world networks to understand various kinds of diffu...
Network-based infectious disease models have been highly effective in elucidating the role of contac...
In this PhD dissertation, we study epidemics on networks of contacts through the lens of statistical...
We predict the future course of ongoing susceptible-infected-susceptible (SIS) epidemics on regular,...
One of the motivating questions for many epidemiologists is “how quickly or widely will a particular...
Epidemic propagation on networks represents an important departure from traditional mass-action mode...
Exact network reconstruction from observations of the SIS process in discrete time would be very use...
The field of epidemiology encompasses a broad class of spreading phenomena, ranging from the seasona...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
A significant amount of effort has been directed at understanding how the structure of a contact net...
Epidemic models are increasingly applied in real-world networks to understand various kinds of diffu...
Network-based infectious disease models have been highly effective in elucidating the role of contac...
In this PhD dissertation, we study epidemics on networks of contacts through the lens of statistical...