A methodology is developed for data analysis based on empirically constructed geodesic metric spaces. For a probability distribution, the length along a path between two points can be defined as the amount of probability mass accumulated along the path. The geodesic, then, is the shortest such path and defines a geodesic metric. Such metrics are transformed in a number of ways to produce parametrised families of geodesic metric spaces, empirical versions of which allow computation of intrinsic means and associated measures of dispersion. These reveal properties of the data, based on geometry, such as those that are difficult to see from the raw Euclidean distances. Examples of application include clustering and classification. For certain p...
In this paper, the problem of clustering rotationally invariant shapes is studied and a solution usi...
In this article, we study the geodesic problem in a generalized metric space, in which the ...
International audienceThis work considers the problem of computing distances between structured obje...
A methodology is developed for data analysis based on empirically constructed geodesic metric spaces...
Several methods in data and shape analysis can be regarded as transformations between metric spaces....
Measuring the dissimilarity between two observations is the basis of many data mining and machine le...
Se exponen diversos métodos geométricos, insistiendo en qué propiedades se fundamentan, en orden a p...
In order to develop statistical methods for shapes with a tree-structure, we construct a shape space...
Kullback-Leibler information allow us to characterize a family of dis- tributions denominated Kullba...
International audienceOptimal transport (OT) distances between probability distributions are paramet...
AbstractBurbea and Rao [1] gave some general methods for constructing quadratic differential metrics...
International audienceThis chapter introduces the basic concepts of differential geometry: Manifolds...
The objective of this tutorial is to introduce researchers/scholars to Geometric Data Analysis (GDA)...
International audienceIn this paper we construct a graph-based normalization algorithm for non-linea...
Distribution for geodesic distance in the simulated and real population of 137 graphs. The shaded re...
In this paper, the problem of clustering rotationally invariant shapes is studied and a solution usi...
In this article, we study the geodesic problem in a generalized metric space, in which the ...
International audienceThis work considers the problem of computing distances between structured obje...
A methodology is developed for data analysis based on empirically constructed geodesic metric spaces...
Several methods in data and shape analysis can be regarded as transformations between metric spaces....
Measuring the dissimilarity between two observations is the basis of many data mining and machine le...
Se exponen diversos métodos geométricos, insistiendo en qué propiedades se fundamentan, en orden a p...
In order to develop statistical methods for shapes with a tree-structure, we construct a shape space...
Kullback-Leibler information allow us to characterize a family of dis- tributions denominated Kullba...
International audienceOptimal transport (OT) distances between probability distributions are paramet...
AbstractBurbea and Rao [1] gave some general methods for constructing quadratic differential metrics...
International audienceThis chapter introduces the basic concepts of differential geometry: Manifolds...
The objective of this tutorial is to introduce researchers/scholars to Geometric Data Analysis (GDA)...
International audienceIn this paper we construct a graph-based normalization algorithm for non-linea...
Distribution for geodesic distance in the simulated and real population of 137 graphs. The shaded re...
In this paper, the problem of clustering rotationally invariant shapes is studied and a solution usi...
In this article, we study the geodesic problem in a generalized metric space, in which the ...
International audienceThis work considers the problem of computing distances between structured obje...