This paper presents a Dynamic Clustering Algorithm for histogram data with an automatic weighting step of the variables by using adaptive distances. The Dynamic Clustering Algorithm is a k-means-like algorithm for clustering a set of objects into a predefined number of classes. Histogram data are realizations of particular set-valued descriptors defined in the context of Symbolic Data Analysis. We propose to use the ℓ2ℓ2 Wasserstein distance for clustering histogram data and two novel adaptive distance based clustering schemes. The ℓ2ℓ2 Wasserstein distance allows to express the variability of a set of histograms in two components: the first related to the variability of their averages and the second to the variability of the histograms rel...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
This paper is concerned with the co-clustering of distribution-valued data, that is, the simultaneou...
In this paper we present a review of some metrics to be proposed as allocation functions in the Dyna...
In this paper we present a review of some metrics to be proposed as allocation functions in the Dyna...
In the present paper we present a new distance, based on the Wasserstein metric, in order to cluster...
Symbolic Data Analysis (SDA) aims to to describe and analyze complex and structured data extracted, ...
An histogram data is described by a set of distributions. In this paper, we propose a clustering ap...
An histogram data is described by a set of distributions. In this paper, we propose a clustering ap...
Interval data allow statistical units to be described by means of intervals of values, whereas their...
This paper presents a partitional dynamic clustering method for interval data based on adaptive Haus...
This paper deals with the clustering of complex data. The input elements to be clustered are linear ...
In this paper, we present a new distance for comparing data described by histograms. The distance is...
"In this paper we introduce a new strategy for summarizing a fast changing. data stream. Evolving da...
International audienceAdaptive Dynamic Clustering Algorithm for Interval-valued Data based on Square...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
This paper is concerned with the co-clustering of distribution-valued data, that is, the simultaneou...
In this paper we present a review of some metrics to be proposed as allocation functions in the Dyna...
In this paper we present a review of some metrics to be proposed as allocation functions in the Dyna...
In the present paper we present a new distance, based on the Wasserstein metric, in order to cluster...
Symbolic Data Analysis (SDA) aims to to describe and analyze complex and structured data extracted, ...
An histogram data is described by a set of distributions. In this paper, we propose a clustering ap...
An histogram data is described by a set of distributions. In this paper, we propose a clustering ap...
Interval data allow statistical units to be described by means of intervals of values, whereas their...
This paper presents a partitional dynamic clustering method for interval data based on adaptive Haus...
This paper deals with the clustering of complex data. The input elements to be clustered are linear ...
In this paper, we present a new distance for comparing data described by histograms. The distance is...
"In this paper we introduce a new strategy for summarizing a fast changing. data stream. Evolving da...
International audienceAdaptive Dynamic Clustering Algorithm for Interval-valued Data based on Square...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
This paper is concerned with the co-clustering of distribution-valued data, that is, the simultaneou...