Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Around Medoids” (PAM) approach, first a timid robustification of fuzzy clustering for a general class of fuzzy data is proposed. Successively, we propose three robust fuzzy clustering models based on, respectively, the so-called metric, noise and trimmed approaches. The metric approach achieves its robustness with respect to outliers by taking into account a “robust” distance measure, the noise approach by introducing a noise cluster represented by a noise prototype, and the trimmed approach by trimming away a certain fraction of data units. A comparative simulation study and measures of misclassification and of robustness with respect to protot...
In the last decades, a number of robust fuzzy clustering algorithms have been proposed to partition ...
This work focuses on clustering data affected by imprecision. The imprecision is managed by fuzzy se...
In the last decades, a number of robust fuzzy clustering algorithms have been proposed to partition ...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
In many real cases the data are not expressed in term of single values but are imprecise. In all the...
Abstract—Clustering methods need to be robust if they are to be useful in practice. In this paper, w...
This dissertation addresses issues central to frizzy classification. The issue of sensitivity to noi...
This dissertation addresses issues central to frizzy classification. The issue of sensitivity to noi...
This dissertation addresses issues central to frizzy classification. The issue of sensitivity to noi...
Producción CientíficaA methodology for robust fuzzy clustering is proposed. This methodology can be...
This work focuses on robust clustering of data affected by imprecision. The imprecision is managed i...
AbstractIn this paper we propose a robust clustering method for handling LR-type fuzzy numbers. The ...
Abstract. A new robust clustering scheme based on fuzzy c-means is proposed and the concept of a fuz...
In the last decades, a number of robust fuzzy clustering algorithms have been proposed to partition ...
This work focuses on clustering data affected by imprecision. The imprecision is managed by fuzzy se...
In the last decades, a number of robust fuzzy clustering algorithms have been proposed to partition ...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
In many real cases the data are not expressed in term of single values but are imprecise. In all the...
Abstract—Clustering methods need to be robust if they are to be useful in practice. In this paper, w...
This dissertation addresses issues central to frizzy classification. The issue of sensitivity to noi...
This dissertation addresses issues central to frizzy classification. The issue of sensitivity to noi...
This dissertation addresses issues central to frizzy classification. The issue of sensitivity to noi...
Producción CientíficaA methodology for robust fuzzy clustering is proposed. This methodology can be...
This work focuses on robust clustering of data affected by imprecision. The imprecision is managed i...
AbstractIn this paper we propose a robust clustering method for handling LR-type fuzzy numbers. The ...
Abstract. A new robust clustering scheme based on fuzzy c-means is proposed and the concept of a fuz...
In the last decades, a number of robust fuzzy clustering algorithms have been proposed to partition ...
This work focuses on clustering data affected by imprecision. The imprecision is managed by fuzzy se...
In the last decades, a number of robust fuzzy clustering algorithms have been proposed to partition ...