Abstract. Distance function to a compact set plays a central role in several areas of computational geometry. Methods that rely on it are robust to the perturbations of the data by the Hausdorff noise, but fail in the presence of outliers. The recently introduced distance to a measure offers a solution by extending the distance function framework to reasoning about the geometry of probability measures, while maintaining theoretical guarantees about the quality of the inferred information. A combinatorial explosion hinders working with distance to a measure as an ordinary power distance function. In this paper, we analyze an approximation scheme that keeps the representation linear in the size of the input, while maintaining the guarantees o...
A distance on the problem domain allows one to tackle some typical goals of machine learning, e.g. c...
. A distance on the problem domain allows one to tackle some typical goals of machine learning, e.g....
Abstract. Hausdorff distance (HD) is an useful measurement to determine the extent to which one shap...
International audienceDistance function to a compact set plays a central role in several areas of co...
International audienceDistance function to a compact set plays a central role in several areas of co...
Data often comes in the form of a point cloud sampled from an unknown compact subset of Euclidean sp...
International audienceData often comes in the form of a point cloud sampled from an unknown compact ...
Analyzing the sub-level sets of the distance to a compact sub-manifold of R d is a common method in ...
In this paper we define distance functions for data sets (and distributions) in a RKHS context. To ...
International audienceData often comes in the form of a point cloud sampled from an unknown compact ...
Given a probability distribution p = (p1., pn) and an integer m < n, what is the probability dist...
This thesis deals with the general question of geometric inference. Given an object that is only kno...
In this paper 1, we use the framework of distance functions to study some geometric and topological ...
In this work, we revisit the curse of dimensionality, especially the concentration of the norm pheno...
Analyzing the sub-level sets of the distance to a compact sub-manifold of R d is a common method in ...
A distance on the problem domain allows one to tackle some typical goals of machine learning, e.g. c...
. A distance on the problem domain allows one to tackle some typical goals of machine learning, e.g....
Abstract. Hausdorff distance (HD) is an useful measurement to determine the extent to which one shap...
International audienceDistance function to a compact set plays a central role in several areas of co...
International audienceDistance function to a compact set plays a central role in several areas of co...
Data often comes in the form of a point cloud sampled from an unknown compact subset of Euclidean sp...
International audienceData often comes in the form of a point cloud sampled from an unknown compact ...
Analyzing the sub-level sets of the distance to a compact sub-manifold of R d is a common method in ...
In this paper we define distance functions for data sets (and distributions) in a RKHS context. To ...
International audienceData often comes in the form of a point cloud sampled from an unknown compact ...
Given a probability distribution p = (p1., pn) and an integer m < n, what is the probability dist...
This thesis deals with the general question of geometric inference. Given an object that is only kno...
In this paper 1, we use the framework of distance functions to study some geometric and topological ...
In this work, we revisit the curse of dimensionality, especially the concentration of the norm pheno...
Analyzing the sub-level sets of the distance to a compact sub-manifold of R d is a common method in ...
A distance on the problem domain allows one to tackle some typical goals of machine learning, e.g. c...
. A distance on the problem domain allows one to tackle some typical goals of machine learning, e.g....
Abstract. Hausdorff distance (HD) is an useful measurement to determine the extent to which one shap...