This work focuses on robust clustering of data affected by imprecision. The imprecision is managed in terms of fuzzy sets. The clustering process is based on the fuzzy and possibilistic approaches. In both approaches the observations are assigned to the clusters by means of membership degrees. In fuzzy clustering the membership degrees express the degrees of sharing of the observations to the clusters. In contrast, in possibilistic clustering the membership degrees are degrees of typicality. These two sources of information are complementary because the former helps to discover the best fuzzy partition of the observations while the latter reflects how well the observations are described by the centroids and, therefore, is helpful to identify outliers. First, a fully possibilistic k-means clustering procedure is suggested. Then, in order to exploit the benefits of both the approaches, a joint possibilistic and fuzzy clustering method for fuzzy data is proposed. A selection procedure for choosing the parameters of the new clustering method is introduced. The effectiveness of the proposal is investigated by means of simulated and real-life data.

Possibilistic and fuzzy clustering methods for robust analysis of non-precise data / Ferraro, MARIA BRIGIDA; Giordani, Paolo. - In: INTERNATIONAL JOURNAL OF APPROXIMATE REASONING. - ISSN 0888-613X. - ELETTRONICO. - 88:(2017), pp. 23-38. [http://dx.doi.org/10.1016/j.ijar.2017.05.002]

Possibilistic and fuzzy clustering methods for robust analysis of non-precise data

FERRARO, MARIA BRIGIDA;GIORDANI, Paolo
2017

Abstract

This work focuses on robust clustering of data affected by imprecision. The imprecision is managed in terms of fuzzy sets. The clustering process is based on the fuzzy and possibilistic approaches. In both approaches the observations are assigned to the clusters by means of membership degrees. In fuzzy clustering the membership degrees express the degrees of sharing of the observations to the clusters. In contrast, in possibilistic clustering the membership degrees are degrees of typicality. These two sources of information are complementary because the former helps to discover the best fuzzy partition of the observations while the latter reflects how well the observations are described by the centroids and, therefore, is helpful to identify outliers. First, a fully possibilistic k-means clustering procedure is suggested. Then, in order to exploit the benefits of both the approaches, a joint possibilistic and fuzzy clustering method for fuzzy data is proposed. A selection procedure for choosing the parameters of the new clustering method is introduced. The effectiveness of the proposal is investigated by means of simulated and real-life data.
2017
imprecise information; robustness; fuzzy clustering; possibilistic clustering; cluster validity
01 Pubblicazione su rivista::01a Articolo in rivista
Possibilistic and fuzzy clustering methods for robust analysis of non-precise data / Ferraro, MARIA BRIGIDA; Giordani, Paolo. - In: INTERNATIONAL JOURNAL OF APPROXIMATE REASONING. - ISSN 0888-613X. - ELETTRONICO. - 88:(2017), pp. 23-38. [http://dx.doi.org/10.1016/j.ijar.2017.05.002]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/957287
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