In this paper we address the problem of clustering interval data, adopting a model-based approach. To this purpose, parametric models for interval-valued variables are used which consider configurations for the variance-covariance matrix that take the nature of the interval data directly into account. Results, both on synthetic and empirical data, clearly show the well-founding of the proposed approach. The method succeeds in finding parsimonious heterocedastic models which is a critical feature in many applications. Furthermore, the analysis of the different data sets made clear the need to explicitly consider the intrinsic variability present in interval data.info:eu-repo/semantics/publishedVersio
This paper addresses the problem of clustering data when the available data measurements are not mul...
This paper addresses the problem of clustering data when the available data measurements are not mul...
In this paper, two fuzzy clustering methods for spatial intervalvalued data are proposed, i.e. the ...
In this paper we address the problem of clustering interval data, adopting a model-based approach. T...
In this paper we present a model-based approach to the clustering of interval data building on recen...
In this paper we present a model-based approach to the clustering of interval data building on recen...
This work focuses on the study of interval data, i.e., when the variables’ values are intervals of ...
In this paper we propose two clustering methods for interval data based on the dynamic cluster algor...
We present the CRAN R package MAINT.Data for the modelling and analysis of multivariate interval dat...
We present the CRAN R package MAINT.Data for the modelling and analysis of multivariate interval da...
In this paper we propose two clustering methods for interval data based on the dynamic cluster algor...
This is an open access article distributed under the Creative Commons Attribution License, which per...
In this paper a robust fuzzy k-means clustering model for interval valued data is introduced. The pe...
AbstractWhile many clustering techniques for interval-valued data have been proposed, there has been...
This paper suggests an interval participatory learning fuzzy clustering (iPL) method for partitionin...
This paper addresses the problem of clustering data when the available data measurements are not mul...
This paper addresses the problem of clustering data when the available data measurements are not mul...
In this paper, two fuzzy clustering methods for spatial intervalvalued data are proposed, i.e. the ...
In this paper we address the problem of clustering interval data, adopting a model-based approach. T...
In this paper we present a model-based approach to the clustering of interval data building on recen...
In this paper we present a model-based approach to the clustering of interval data building on recen...
This work focuses on the study of interval data, i.e., when the variables’ values are intervals of ...
In this paper we propose two clustering methods for interval data based on the dynamic cluster algor...
We present the CRAN R package MAINT.Data for the modelling and analysis of multivariate interval dat...
We present the CRAN R package MAINT.Data for the modelling and analysis of multivariate interval da...
In this paper we propose two clustering methods for interval data based on the dynamic cluster algor...
This is an open access article distributed under the Creative Commons Attribution License, which per...
In this paper a robust fuzzy k-means clustering model for interval valued data is introduced. The pe...
AbstractWhile many clustering techniques for interval-valued data have been proposed, there has been...
This paper suggests an interval participatory learning fuzzy clustering (iPL) method for partitionin...
This paper addresses the problem of clustering data when the available data measurements are not mul...
This paper addresses the problem of clustering data when the available data measurements are not mul...
In this paper, two fuzzy clustering methods for spatial intervalvalued data are proposed, i.e. the ...