The increasing availability of data demands for techniques to filter information in large complex networks of interactions. A number of approaches have been proposed to extract network backbones by assessing the statistical significance of links against null hypotheses of random interaction. Yet, it is well known that the growth of most real-world networks is non-random, as past interactions between nodes typically increase the likelihood of further interaction. Here, we propose a filtering methodology inspired by the Pólya urn, a combinatorial model driven by a self-reinforcement mechanism, which relies on a family of null hypotheses that can be calibrated to assess which links are statistically significant with respect to a given network’...
International audienceNetworks are an adequate representation for modeling and analyzing a great var...
Many complex systems present an intrinsic bipartite structure where elements of one set link to elem...
Filtering information in complex networks entails the process of removing interactions explained by ...
The increasing availability of data demands for techniques to filter information in large complex ne...
Recent empirical evidence has shown that in many real-world systems, successfully represented as net...
Motivation: Recently, network theory has emerged as an effective tool to model complex systems by re...
International audienceNetworks are an invaluable tool for representing and understanding complex sys...
Complex networks datasets often come with the problem of missing information: interactions data that...
International audienceMany real-world networks' size and density hinder visualization and graph proc...
The study of complex networks has emerged over the past several years as a theme spanning many disci...
Network phenomena are of key importance in the majority of scientific disciplines. They motivate the...
Many complex systems present an intrinsic bipartite structure where elements of one set link to elem...
The goal of this PhD thesis is to exemplify how methods to model complex systems, mainly the languag...
From the spread of disease across a population to the dispersion of vehicular traffic in cities, man...
We introduce a technique that is capable to filter out information from complex systems, by mapping...
International audienceNetworks are an adequate representation for modeling and analyzing a great var...
Many complex systems present an intrinsic bipartite structure where elements of one set link to elem...
Filtering information in complex networks entails the process of removing interactions explained by ...
The increasing availability of data demands for techniques to filter information in large complex ne...
Recent empirical evidence has shown that in many real-world systems, successfully represented as net...
Motivation: Recently, network theory has emerged as an effective tool to model complex systems by re...
International audienceNetworks are an invaluable tool for representing and understanding complex sys...
Complex networks datasets often come with the problem of missing information: interactions data that...
International audienceMany real-world networks' size and density hinder visualization and graph proc...
The study of complex networks has emerged over the past several years as a theme spanning many disci...
Network phenomena are of key importance in the majority of scientific disciplines. They motivate the...
Many complex systems present an intrinsic bipartite structure where elements of one set link to elem...
The goal of this PhD thesis is to exemplify how methods to model complex systems, mainly the languag...
From the spread of disease across a population to the dispersion of vehicular traffic in cities, man...
We introduce a technique that is capable to filter out information from complex systems, by mapping...
International audienceNetworks are an adequate representation for modeling and analyzing a great var...
Many complex systems present an intrinsic bipartite structure where elements of one set link to elem...
Filtering information in complex networks entails the process of removing interactions explained by ...