Many real-world networks tend to be very dense. Particular examples of interest arise in the construction of networks that represent pairwise similarities between objects. In these cases, the networks under consideration are weighted, generally with positive weights between any two nodes. Visualization and analysis of such networks, especially when the number of nodes is large, can pose significant challenges which are often met by reducing the edge set. Any effective “sparsification” must retain and reflect the important structure in the network. A common method is to simply apply a hard threshold, keeping only those edges whose weight exceeds some predetermined value. A more principled approach is to extract the multiscale “backbone” of a...
Abstract. Many applications produce massive complex networks whose analysis would benefit from paral...
The field of complex networks has seen a steady growth in the last decade, fuelled by an ever-growin...
Complex networks grow subject to structural constraints which affect their measurable properties. As...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
International audienceMany real-world networks' size and density hinder visualization and graph proc...
International audienceAbstract Network science provides effective tools to model and analyze complex...
International audienceNetworks are an adequate representation for modeling and analyzing a great var...
Abstract — Given a set of k networks, possibly with differ-ent sizes and no overlaps in nodes or edg...
International audienceNetworks are an invaluable tool for representing and understanding complex sys...
This dissertation develops an inferential framework for a highly non-parametric class of network mod...
This paper introduces a computationally inexpensive method for extracting the backbone of one-mode n...
The need to visualize large and complex networks has strongly increased in the last decade. Althoug...
<p>In this paper, we argue for representing networks as a bag of triangular motifs, particularly for...
<p>Because network topologies can be difficult to decipher in large networks, here we illustrate the...
Abstract. Many applications produce massive complex networks whose analysis would benefit from paral...
The field of complex networks has seen a steady growth in the last decade, fuelled by an ever-growin...
Complex networks grow subject to structural constraints which affect their measurable properties. As...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
International audienceMany real-world networks' size and density hinder visualization and graph proc...
International audienceAbstract Network science provides effective tools to model and analyze complex...
International audienceNetworks are an adequate representation for modeling and analyzing a great var...
Abstract — Given a set of k networks, possibly with differ-ent sizes and no overlaps in nodes or edg...
International audienceNetworks are an invaluable tool for representing and understanding complex sys...
This dissertation develops an inferential framework for a highly non-parametric class of network mod...
This paper introduces a computationally inexpensive method for extracting the backbone of one-mode n...
The need to visualize large and complex networks has strongly increased in the last decade. Althoug...
<p>In this paper, we argue for representing networks as a bag of triangular motifs, particularly for...
<p>Because network topologies can be difficult to decipher in large networks, here we illustrate the...
Abstract. Many applications produce massive complex networks whose analysis would benefit from paral...
The field of complex networks has seen a steady growth in the last decade, fuelled by an ever-growin...
Complex networks grow subject to structural constraints which affect their measurable properties. As...