International audienceIn recent years, researchers proposed several algorithms that compute metric quantities of real-world complex networks, and that are very efficient in practice, although there is no worst-case guarantee. In this work, we propose an axiomatic framework to analyze the performances of these algorithms, by proving that they are efficient on the class of graphs satisfying certain properties. Furthermore, we prove that these properties are verified asymptotically almost surely by several probabilistic models that generate power law random graphs, such as the Configuration Model, the Chung-Lu model, and the Norros-Reittu model. Thus, our results imply average-case analyses in these models. For example, in our framework, exist...
The Wiener index of a graph G is the sum of all its distances. Up to renormalization, it is also the...
On sparse graphs, Roditty and Williams [2013] proved that no O(n^{2-?})-time algorithm achieves an a...
In the field of parameterized complexity theory, the study of graph width measures has been intimate...
Motivated by complex networks analysis, we study algorithms that compute metric properties of real-...
The number one criticism of average-case analysis is that we do not actually know the probability di...
Many graph properties are expressible in first order logic. Whether a graph contains a clique or a d...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
The average distance from a node to all other nodes in a graph, or from a query point in a metric sp...
A generic NP-complete graph problem is described. The calculation of certain predicate on the graph ...
In Chung-Lu random graphs, a classic model for real-world networks, each vertex is equipped with a w...
The problem of detecting dense subgraphs (\emph{communities}) in large sparse graphs is inherent to ...
We study a number of graph exploration problems in the following natural scenario: an algorithm star...
International audienceThe (Gromov) hyperbolicity is a topological property of a graph, which has bee...
This research aims to identify strong structural features of real-world complex networks, sufficient...
We survey the recent work on phase transition and distances in various random graph models with gene...
The Wiener index of a graph G is the sum of all its distances. Up to renormalization, it is also the...
On sparse graphs, Roditty and Williams [2013] proved that no O(n^{2-?})-time algorithm achieves an a...
In the field of parameterized complexity theory, the study of graph width measures has been intimate...
Motivated by complex networks analysis, we study algorithms that compute metric properties of real-...
The number one criticism of average-case analysis is that we do not actually know the probability di...
Many graph properties are expressible in first order logic. Whether a graph contains a clique or a d...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
The average distance from a node to all other nodes in a graph, or from a query point in a metric sp...
A generic NP-complete graph problem is described. The calculation of certain predicate on the graph ...
In Chung-Lu random graphs, a classic model for real-world networks, each vertex is equipped with a w...
The problem of detecting dense subgraphs (\emph{communities}) in large sparse graphs is inherent to ...
We study a number of graph exploration problems in the following natural scenario: an algorithm star...
International audienceThe (Gromov) hyperbolicity is a topological property of a graph, which has bee...
This research aims to identify strong structural features of real-world complex networks, sufficient...
We survey the recent work on phase transition and distances in various random graph models with gene...
The Wiener index of a graph G is the sum of all its distances. Up to renormalization, it is also the...
On sparse graphs, Roditty and Williams [2013] proved that no O(n^{2-?})-time algorithm achieves an a...
In the field of parameterized complexity theory, the study of graph width measures has been intimate...