We consider the problem of finding the graph on which an epidemic cascade spreads, given only the times when each node gets infected. While this is a problem of importance in several contexts – offline and online social networks, e-commerce, epidemiology, vulnerabilities in infrastructure networks – there has been very little work, analytical or empirical, on finding the graph. Clearly, it is impossible to do so from just one cascade; our interest is in learning the graph from a small number of cascades. For the classic and popular “independent cascade ” SIR epidemics, we analytically establish the num-ber of cascades required by both the global maximum-likelihood (ML) estimator, and a natural greedy algorithm. Both results are based on a k...
We consider a natural network diffusion process, modeling the spread of information or infectious di...
Abstract. We are interested in the spread of an epidemic between two communities that have higher co...
When information or infectious diseases spread over a network, in many practical cases, one can obse...
Graph learning is an inference problem of estimating connectivity of a graph from a collection of ep...
Local interactions on a graph will lead to global dynamic behaviour. In this thesis we focus on two ...
Epidemic models are increasingly applied in real-world networks to understand various kinds of diffu...
Only a subset of infections is actually observed in an outbreak, due to multiple reasons such as asy...
Random walks on graphs are often used to analyse and predict epidemic spreads and to investigate pos...
One way to describe the spread of an infection on a network is by approximating the network by a ran...
In this PhD dissertation, we study epidemics on networks of contacts through the lens of statistical...
| openaire: EC/H2020/654024/EU//SoBigDataWe consider the problem of reconstructing an epidemic over ...
Epidemic processes can model anything that spreads. As such, they are a useful tool for studying not...
Abstract Given a network of who-contacts-whom or who-links-to-whom, will a contagious virus/product/...
The history of infections and epidemics holds famous examples where understand-ing, containing and u...
We establish a connection between epidemic models on random networks with general infection times co...
We consider a natural network diffusion process, modeling the spread of information or infectious di...
Abstract. We are interested in the spread of an epidemic between two communities that have higher co...
When information or infectious diseases spread over a network, in many practical cases, one can obse...
Graph learning is an inference problem of estimating connectivity of a graph from a collection of ep...
Local interactions on a graph will lead to global dynamic behaviour. In this thesis we focus on two ...
Epidemic models are increasingly applied in real-world networks to understand various kinds of diffu...
Only a subset of infections is actually observed in an outbreak, due to multiple reasons such as asy...
Random walks on graphs are often used to analyse and predict epidemic spreads and to investigate pos...
One way to describe the spread of an infection on a network is by approximating the network by a ran...
In this PhD dissertation, we study epidemics on networks of contacts through the lens of statistical...
| openaire: EC/H2020/654024/EU//SoBigDataWe consider the problem of reconstructing an epidemic over ...
Epidemic processes can model anything that spreads. As such, they are a useful tool for studying not...
Abstract Given a network of who-contacts-whom or who-links-to-whom, will a contagious virus/product/...
The history of infections and epidemics holds famous examples where understand-ing, containing and u...
We establish a connection between epidemic models on random networks with general infection times co...
We consider a natural network diffusion process, modeling the spread of information or infectious di...
Abstract. We are interested in the spread of an epidemic between two communities that have higher co...
When information or infectious diseases spread over a network, in many practical cases, one can obse...