International audienceData are often represented as graphs. Many common tasks in data science are based on distances between entities. While some data science methodologies natively take graphs as their input, there are many more that take their input in vectorial form. In this survey we discuss the fundamental problem of mapping graphs to vectors, and its relation with mathematical programming. We discuss applications, solution methods, dimensional reduction techniques and some of their limits. We then present an application of some of these ideas to neural networks, showing that distance geometry techniques can give competitive performance with respect to more traditional graph-to-vector mappings
Visualization is an important part of Network Analysis. It helps to find features of the network tha...
Evaluating similarity between graphs is of major importance in several computer vision and pattern r...
International audienceEuclidean distance geometry is the study of Euclidean geometry based on the co...
International audienceData are often represented as graphs. Many common tasks in data science are ba...
The emergence of geometric deep learning as a novel framework to deal with graph-based representatio...
Graph representations have been widely used in pattern recognition thanks to their powerful represen...
This thesis presents techniques of modeling large and dense networks and methods of computing distan...
Abstract—Recently, there has been a growing interest in learning distances directly from training da...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
In the domains of geography, urban development and spatial planning, graph theory is used to tackle ...
The fundamental problem of distance geometry involves the characterization and study of sets of poin...
Graphs have powerful representations of all kinds of theoretical or experimental mathematical object...
International audienceThe fundamental problem of distance geometry consists in finding a realization...
Visualization is an important part of Network Analysis. It helps to find features of the network tha...
Evaluating similarity between graphs is of major importance in several computer vision and pattern r...
International audienceEuclidean distance geometry is the study of Euclidean geometry based on the co...
International audienceData are often represented as graphs. Many common tasks in data science are ba...
The emergence of geometric deep learning as a novel framework to deal with graph-based representatio...
Graph representations have been widely used in pattern recognition thanks to their powerful represen...
This thesis presents techniques of modeling large and dense networks and methods of computing distan...
Abstract—Recently, there has been a growing interest in learning distances directly from training da...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
In the domains of geography, urban development and spatial planning, graph theory is used to tackle ...
The fundamental problem of distance geometry involves the characterization and study of sets of poin...
Graphs have powerful representations of all kinds of theoretical or experimental mathematical object...
International audienceThe fundamental problem of distance geometry consists in finding a realization...
Visualization is an important part of Network Analysis. It helps to find features of the network tha...
Evaluating similarity between graphs is of major importance in several computer vision and pattern r...
International audienceEuclidean distance geometry is the study of Euclidean geometry based on the co...