This paper deals with the clustering of complex data. The input elements to be clustered are linear models estimated on samples arising from several sub-populations (typologies of individuals). We review the main approaches to the computation of metrics between linear models. We propose to use a Wasserstein based metric for the first time in this field. We show the properties of the proposed metric and an application to real data using a dynamic clustering algorithm
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
Abstract. We consider approximating distributions within the framework of optimal mass transport and...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
Interval data allow statistical units to be described by means of intervals of values, whereas their...
In the present paper we present a new distance, based on the Wasserstein metric, in order to cluster...
We propose a novel approach to the problem of multilevel clustering, which aims to simultaneously pa...
Metric Learning has proved valuable in information retrieval and classification problems, with many ...
This paper presents a Dynamic Clustering Algorithm for histogram data with an automatic weighting st...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
International audienceClustering is a data analysis method for extracting knowledge by discovering g...
Symbolic Data Analysis (SDA) aims to to describe and analyze complex and structured data extracted, ...
We present new algorithms to compute the mean of a set of empirical probability measures under the o...
Description of individuals in ill-structured domains produces messy data matrices. In this contex...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
Abstract. We consider approximating distributions within the framework of optimal mass transport and...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
Interval data allow statistical units to be described by means of intervals of values, whereas their...
In the present paper we present a new distance, based on the Wasserstein metric, in order to cluster...
We propose a novel approach to the problem of multilevel clustering, which aims to simultaneously pa...
Metric Learning has proved valuable in information retrieval and classification problems, with many ...
This paper presents a Dynamic Clustering Algorithm for histogram data with an automatic weighting st...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
International audienceClustering is a data analysis method for extracting knowledge by discovering g...
Symbolic Data Analysis (SDA) aims to to describe and analyze complex and structured data extracted, ...
We present new algorithms to compute the mean of a set of empirical probability measures under the o...
Description of individuals in ill-structured domains produces messy data matrices. In this contex...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
Abstract. We consider approximating distributions within the framework of optimal mass transport and...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...