In this paper we propose two clustering methods for interval data based on the dynamic cluster algorithm. These methods use different homogeneity criteria as well as different kinds of cluster representations (prototypes). Some tools to interpret the final partitions are also introduced. An application of one of the methods concludes the paper
International audienceClustering is a very powerful tool for automatic detection of relevant subgrou...
In this paper, two fuzzy clustering methods for spatial intervalvalued data are proposed, i.e. the ...
International audienceClustering is a very powerful tool for automatic detection of relevant subgrou...
In this paper we propose two clustering methods for interval data based on the dynamic cluster algor...
This paper presents a partitional dynamic clustering method for interval data based on adaptive Haus...
This paper presents a partitional dynamic clustering method for interval data based on adaptive Haus...
In this paper we address the problem of clustering interval data, adopting a model-based approach. T...
Interval data allow statistical units to be described by means of intervals of values, whereas their...
In this paper we address the problem of clustering interval data, adopting a model-based approach. T...
This paper suggests an interval participatory learning fuzzy clustering (iPL) method for partitionin...
This is an open access article distributed under the Creative Commons Attribution License, which per...
In this paper we present a model-based approach to the clustering of interval data building on recen...
This article is is licensed under a Creative Commons Attribution-NonCommercial 4.0 International Lic...
International audienceIn this paper we propose a divisive top-down clustering method designed for in...
In this paper we present a model-based approach to the clustering of interval data building on recen...
International audienceClustering is a very powerful tool for automatic detection of relevant subgrou...
In this paper, two fuzzy clustering methods for spatial intervalvalued data are proposed, i.e. the ...
International audienceClustering is a very powerful tool for automatic detection of relevant subgrou...
In this paper we propose two clustering methods for interval data based on the dynamic cluster algor...
This paper presents a partitional dynamic clustering method for interval data based on adaptive Haus...
This paper presents a partitional dynamic clustering method for interval data based on adaptive Haus...
In this paper we address the problem of clustering interval data, adopting a model-based approach. T...
Interval data allow statistical units to be described by means of intervals of values, whereas their...
In this paper we address the problem of clustering interval data, adopting a model-based approach. T...
This paper suggests an interval participatory learning fuzzy clustering (iPL) method for partitionin...
This is an open access article distributed under the Creative Commons Attribution License, which per...
In this paper we present a model-based approach to the clustering of interval data building on recen...
This article is is licensed under a Creative Commons Attribution-NonCommercial 4.0 International Lic...
International audienceIn this paper we propose a divisive top-down clustering method designed for in...
In this paper we present a model-based approach to the clustering of interval data building on recen...
International audienceClustering is a very powerful tool for automatic detection of relevant subgrou...
In this paper, two fuzzy clustering methods for spatial intervalvalued data are proposed, i.e. the ...
International audienceClustering is a very powerful tool for automatic detection of relevant subgrou...