International audienceThis paper deals with a particular problem of graph reduction. The reduced graph is aimed to have a particular structure, namely to be scale-free. To this end, we define a metric to measure the scale-freeness by measuring the difference between the degree distribution and the scale-free degree distribution. The reduction is made under constraints to preserve consistency with the initial graph. In particular, the reduced graph preserves the eigenvector centrality of the initial graph. We study the optimization problem and, based on the gained insights, we derive an algorithm allowing to find an approximate solution. We also show that, if the initial network is a flow network, it is possible to design the algorithm such ...
A complex network is characterized by its degree distribution and clustering coefficient. Given a sc...
Scale-free networks are characterized by a degree distribution with power-law behavior and have been...
A key problem in statistics and machine learning is the determination of network structure from data...
International audienceThis paper deals with a particular problem of graph reduction. The reduced gra...
International audienceThis paper deals with the problem of graph reduction towards a scale-free grap...
In light of the complexity induced by large-scale networks, the design of network partitioning algor...
Graphs at different scales are essential tools for many transportation applications. Notwithstanding...
We study the maximum-flow/minimum-cut problem on scale-free networks, i.e., graphs whose degree dist...
In the literature of scale-free graphs, the s-Metric (S(G)) aims at quantifying the extent at which ...
Abstract A road network can be represented as a weighted directed graph with the nodes being the tra...
AbstractA linear-time algorithm that reduces the set of flows on a directed graph with an additional...
During the last ten years, graph cuts had a growing impact in shape optimization. In particular, the...
We obtain graphicality conditions for general types of scale-free networks. The same conditions obta...
Scale-free graphs generated following the Barabási-Albert method, then selected for induced width. T...
Many large-scale and safety critical systems can be modeled as flow networks. Traditional approaches...
A complex network is characterized by its degree distribution and clustering coefficient. Given a sc...
Scale-free networks are characterized by a degree distribution with power-law behavior and have been...
A key problem in statistics and machine learning is the determination of network structure from data...
International audienceThis paper deals with a particular problem of graph reduction. The reduced gra...
International audienceThis paper deals with the problem of graph reduction towards a scale-free grap...
In light of the complexity induced by large-scale networks, the design of network partitioning algor...
Graphs at different scales are essential tools for many transportation applications. Notwithstanding...
We study the maximum-flow/minimum-cut problem on scale-free networks, i.e., graphs whose degree dist...
In the literature of scale-free graphs, the s-Metric (S(G)) aims at quantifying the extent at which ...
Abstract A road network can be represented as a weighted directed graph with the nodes being the tra...
AbstractA linear-time algorithm that reduces the set of flows on a directed graph with an additional...
During the last ten years, graph cuts had a growing impact in shape optimization. In particular, the...
We obtain graphicality conditions for general types of scale-free networks. The same conditions obta...
Scale-free graphs generated following the Barabási-Albert method, then selected for induced width. T...
Many large-scale and safety critical systems can be modeled as flow networks. Traditional approaches...
A complex network is characterized by its degree distribution and clustering coefficient. Given a sc...
Scale-free networks are characterized by a degree distribution with power-law behavior and have been...
A key problem in statistics and machine learning is the determination of network structure from data...