Simplicial complexes store in discrete form key information on a topological space, and have been used in mathematics to introduce combinatorial and discrete tools in geometry and topology. They represent a topological space as a collection of ‘simple elements' (such as vertices, edges, triangles, tetrahedra, and more general simplices) that are glued to each other in a structured manner. In the last 40 years, they have been a basic tool in computer visualization for storing and classifying different shapes of 3d images, then in the early 2000s these techniques were success- fully applied to more general data, not necessarily sampled from a metric space. The use of techniques borrowed from algebraic topology has been very successfull in ana...
International audienceThis paper introduces a new data structure, called simplex tree, to represent ...
PhDSimplicial complexes are a generalization of networks that can encode many-body interactions betw...
This paper presents an efficient algorithm to extract knowledge from high-dimensionality, high- comp...
Simplicial complexes store in discrete form key information on a topological space, and have been us...
Simplicial complexes are used in topological data analysis (TDA) to extract topological features of ...
The first step in topological data analysis is often the construction of a simplicial complex. This ...
We provide a short introduction to the field of topological data analysis (TDA) and discuss its poss...
A point cloud can be endowed with a topological structure by constructing a simplicial complex using...
International audienceIt has been observed since a long time that data are often carrying interestin...
In recent years, a new approach to data analysis has been developed, based on topological methods. T...
Today there is an immense production of data, and the need for better methods to analyze data is eve...
Topological data analysis is a branch of computational topology which uses algebra to obtain topolo...
The goal of this paper is to establish the fundamental tools to analyze signals defined over a topol...
Every moment of our daily life belongs to the new era of "Big Data". We continuously produce, at an ...
Many methods for the reconstruction of shapes from sets of points produce ordered simplicial complex...
International audienceThis paper introduces a new data structure, called simplex tree, to represent ...
PhDSimplicial complexes are a generalization of networks that can encode many-body interactions betw...
This paper presents an efficient algorithm to extract knowledge from high-dimensionality, high- comp...
Simplicial complexes store in discrete form key information on a topological space, and have been us...
Simplicial complexes are used in topological data analysis (TDA) to extract topological features of ...
The first step in topological data analysis is often the construction of a simplicial complex. This ...
We provide a short introduction to the field of topological data analysis (TDA) and discuss its poss...
A point cloud can be endowed with a topological structure by constructing a simplicial complex using...
International audienceIt has been observed since a long time that data are often carrying interestin...
In recent years, a new approach to data analysis has been developed, based on topological methods. T...
Today there is an immense production of data, and the need for better methods to analyze data is eve...
Topological data analysis is a branch of computational topology which uses algebra to obtain topolo...
The goal of this paper is to establish the fundamental tools to analyze signals defined over a topol...
Every moment of our daily life belongs to the new era of "Big Data". We continuously produce, at an ...
Many methods for the reconstruction of shapes from sets of points produce ordered simplicial complex...
International audienceThis paper introduces a new data structure, called simplex tree, to represent ...
PhDSimplicial complexes are a generalization of networks that can encode many-body interactions betw...
This paper presents an efficient algorithm to extract knowledge from high-dimensionality, high- comp...