International audienceGraph models are standard for representing mutual relationships between sets of entities. Often, graphs deal with a large number of entities with a small number of connections (e.g. social media relationships, infectious disease spread). The distances or similarities between such large graphs are known to be well established by the Graphlet Correlation Distance (GCD). This paper deals with small graphs (with potentially high densities of connections) that have been somewhat neglected in the literature but that concern important fora like sociology, ecology and fisheries, to mention some examples. First, based on numerical experiments, we study the conditions under which Erdős-Rényi, Fitness Scale-Free, Watts-Strogatz s...
Over the years, several theoretical graph generation models have been proposed. Among the most promi...
<p>Random, small-world and scale-free networks containing 20 nodes and 73 connections were generated...
Researchers have proposed a variety of metrics to measure important graph properties, for instance, ...
International audienceGraph models are standard for representing mutual relationships between sets o...
Comparison of graph structure is a ubiquitous task in data analysis and machine learning, with diver...
Many large network data sets are noisy and contain links representing low-intensity relationships th...
Many large network data sets are noisy and contain links representing low-intensity relationships th...
BackgroundThe recent explosion in biological and other real-world network data has created the need ...
Analyzing the characteristics of complex networks is a principal task of network sci- ence. In this ...
Graph theory is a valuable framework to study the organization of functional and anatomical connecti...
Graph theory is a valuable framework to study the organization of functional and anatomical connecti...
Understanding and developing a correlation measure that can detect general dependencies is not only ...
Empirical findings have shown that many real-world networks share fascinating features. Indeed, many...
We propose methods on two fundamental graph theoretic problems: (1) network comparison, and (2) netw...
International audienceGraphs are universal modeling tools. They are used to represent objects and th...
Over the years, several theoretical graph generation models have been proposed. Among the most promi...
<p>Random, small-world and scale-free networks containing 20 nodes and 73 connections were generated...
Researchers have proposed a variety of metrics to measure important graph properties, for instance, ...
International audienceGraph models are standard for representing mutual relationships between sets o...
Comparison of graph structure is a ubiquitous task in data analysis and machine learning, with diver...
Many large network data sets are noisy and contain links representing low-intensity relationships th...
Many large network data sets are noisy and contain links representing low-intensity relationships th...
BackgroundThe recent explosion in biological and other real-world network data has created the need ...
Analyzing the characteristics of complex networks is a principal task of network sci- ence. In this ...
Graph theory is a valuable framework to study the organization of functional and anatomical connecti...
Graph theory is a valuable framework to study the organization of functional and anatomical connecti...
Understanding and developing a correlation measure that can detect general dependencies is not only ...
Empirical findings have shown that many real-world networks share fascinating features. Indeed, many...
We propose methods on two fundamental graph theoretic problems: (1) network comparison, and (2) netw...
International audienceGraphs are universal modeling tools. They are used to represent objects and th...
Over the years, several theoretical graph generation models have been proposed. Among the most promi...
<p>Random, small-world and scale-free networks containing 20 nodes and 73 connections were generated...
Researchers have proposed a variety of metrics to measure important graph properties, for instance, ...