The vast majority of network data sets contain errors and omissions, although this fact is rarely incorporated in traditional network analysis. Recently, an increasing effort has been made to fill this methodological gap by developing network-reconstruction approaches based on Bayesian inference. These approaches, however, rely on assumptions of uniform error rates and on direct estimations of the existence of each edge via repeated measurements, something that is currently unavailable for the majority of network data. Here, we develop a Bayesian reconstruction approach that lifts these limitations by allowing for not only heterogeneous errors, but also for single edge measurements without direct error estimates. Our approach works by coupl...
The study of complex networks is at the heart of an increasing range of scien- tific fields, from mi...
Complex networks datasets often come with the problem of missing information: interactions data that...
Complex networks datasets often come with the problem of missing information: interactions data that...
Interconnected network structures play a crucial role in many aspects of our lives. Understanding th...
Most empirical studies of complex networks return rich but noisy data, as they measure the network s...
Most empirical studies of complex networks return rich but noisy data, as they measure the network s...
Most empirical studies of complex networks return rich but noisy data, as they measure the network s...
Paper on arXiv (arXiv:1310.8341), currently in review with Scientific Reports (as of 29 May 2015).Ge...
Reconstruction of a high-dimensional network may benefit substantially from the inclusion of prior k...
Reconstruction of a high-dimensional network may benefit substantially from the inclusion of prior k...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
Bayesian Networks are an established computational approach for data driven network inference. Howev...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
Complex networks datasets often come with the problem of missing information: interactions data that...
A network consists of a set of vertices and a set of edges between these vertices. The vertices repr...
The study of complex networks is at the heart of an increasing range of scien- tific fields, from mi...
Complex networks datasets often come with the problem of missing information: interactions data that...
Complex networks datasets often come with the problem of missing information: interactions data that...
Interconnected network structures play a crucial role in many aspects of our lives. Understanding th...
Most empirical studies of complex networks return rich but noisy data, as they measure the network s...
Most empirical studies of complex networks return rich but noisy data, as they measure the network s...
Most empirical studies of complex networks return rich but noisy data, as they measure the network s...
Paper on arXiv (arXiv:1310.8341), currently in review with Scientific Reports (as of 29 May 2015).Ge...
Reconstruction of a high-dimensional network may benefit substantially from the inclusion of prior k...
Reconstruction of a high-dimensional network may benefit substantially from the inclusion of prior k...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
Bayesian Networks are an established computational approach for data driven network inference. Howev...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
Complex networks datasets often come with the problem of missing information: interactions data that...
A network consists of a set of vertices and a set of edges between these vertices. The vertices repr...
The study of complex networks is at the heart of an increasing range of scien- tific fields, from mi...
Complex networks datasets often come with the problem of missing information: interactions data that...
Complex networks datasets often come with the problem of missing information: interactions data that...