On the Use of the Kantorovich-Rubinstein Distance for Dimensionality Reduction

En cours de chargement...
Vignette d'image

Nom de la revue

ISSN de la revue

Titre du volume

Éditeur

Université d'Ottawa / University of Ottawa

Résumé

The goal of this thesis is to study the use of the Kantorovich-Rubinstein distance as to build a descriptor of sample complexity in classification problems. The idea is to use the fact that the Kantorovich-Rubinstein distance is a metric in the space of measures that also takes into account the geometry and topology of the underlying metric space. We associate to each class of points a measure and thus study the geometrical information that we can obtain from the Kantorovich-Rubinstein distance between those measures. We show that a large Kantorovich-Rubinstein distance between those measures allows to conclude that there exists a 1-Lipschitz classifier that classifies well the classes of points. We also discuss the limitation of the Kantorovich-Rubinstein distance as a descriptor.

Description

Mots-clés

Machine Learning, Kantorovich-Rubinstein distance

Citation

Approbation

Évaluation

Complété par

Référencé par