Producción CientíficaIn fuzzy clustering, data elements can belong to more than one cluster , and membership levels are associated with each element, to indicate the strength of the association between that data element and a particular cluster. Unfortunately, fuzzy clustering is not robust, while in real applications the data is contaminated by outliers and noise, and the assumed underlying Gaussian distributions could be unrealistic. Here we propose a robust fuzzy estimator for clustering through Factor Analyzers, by introducing the joint usage of trimming and of constrained estimation of noise matrices in the classic Maximum Likelihood approach
This dissertation addresses issues central to frizzy classification. The issue of sensitivity to noi...
Factor analysis is a latent subspace model commonly used for local dimensionality reduction tasks. F...
Abstract—Clustering methods need to be robust if they are to be useful in practice. In this paper, w...
A clustering algorithm that combines the advantages of fuzzy clustering and robust statistical estim...
Producción CientíficaA methodology for robust fuzzy clustering is proposed. This methodology can be...
new robust fuzzy linear clustering method is proposed. We estimate coe cients of a linear regressio...
It is well-known that outliers and noisy data can be very harmful when applying clustering methods....
It is well-known that outliers and noisy data can be very harmful when applying clustering methods....
Three different approaches for robust fuzzy clusterwise regression are reviewed. They are all based ...
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...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
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...
Factor analysis is a latent subspace model commonly used for local dimensionality reduction tasks. F...
Abstract—Clustering methods need to be robust if they are to be useful in practice. In this paper, w...
A clustering algorithm that combines the advantages of fuzzy clustering and robust statistical estim...
Producción CientíficaA methodology for robust fuzzy clustering is proposed. This methodology can be...
new robust fuzzy linear clustering method is proposed. We estimate coe cients of a linear regressio...
It is well-known that outliers and noisy data can be very harmful when applying clustering methods....
It is well-known that outliers and noisy data can be very harmful when applying clustering methods....
Three different approaches for robust fuzzy clusterwise regression are reviewed. They are all based ...
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...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
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...
Factor analysis is a latent subspace model commonly used for local dimensionality reduction tasks. F...
Abstract—Clustering methods need to be robust if they are to be useful in practice. In this paper, w...