Fifty years have gone by since the publication of the first paper on clustering based on fuzzy sets theory. In 1965, L.A. Zadeh had published “Fuzzy Sets”[335]. After only one year, the first effects of this seminal paper began to emerge, with the pioneering paper on clustering by Bellman, Kalaba, Zadeh [33], in which they proposed a prototypal of cluster- ing algorithm based on the fuzzy sets theory. Starting from this paper, several uncertain clustering methods based on different theoretical approaches for modeling the uncertainty have been proposed. The present paper presents a systematic literature review of these clustering approaches. In particular, with respect to the Statistical Reasoning System, we first illustrate the connection b...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
In many application areas, there is a need for clustering, and there is a need to take fuzzy uncerta...
MotivationMany real applications such as businesses and health generate large categorical datasets w...
Fifty years have gone by since the publication of the first paper on clustering based on fuzzy sets ...
Fifty years have gone by since the publication of the first paper on clustering based on fuzzy sets ...
Fifty years have gone by since the publication of the first pape on clustering based on fuzzy sets ...
This work focuses on clustering data affected by imprecision. The imprecision is managed by fuzzy se...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...
At the present stage the solution to the problem of decision-making support in the conditions of unc...
At the present stage the solution to the problem of decision-making support in the conditions of unc...
The present book outlines a new approach to possibilistic clustering in which the sought clustering ...
Recently, a new empirically successful algorithm was proposed for crisp clustering: the K-sets algor...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
In many application areas, there is a need for clustering, and there is a need to take fuzzy uncerta...
MotivationMany real applications such as businesses and health generate large categorical datasets w...
Fifty years have gone by since the publication of the first paper on clustering based on fuzzy sets ...
Fifty years have gone by since the publication of the first paper on clustering based on fuzzy sets ...
Fifty years have gone by since the publication of the first pape on clustering based on fuzzy sets ...
This work focuses on clustering data affected by imprecision. The imprecision is managed by fuzzy se...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...
At the present stage the solution to the problem of decision-making support in the conditions of unc...
At the present stage the solution to the problem of decision-making support in the conditions of unc...
The present book outlines a new approach to possibilistic clustering in which the sought clustering ...
Recently, a new empirically successful algorithm was proposed for crisp clustering: the K-sets algor...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
In many application areas, there is a need for clustering, and there is a need to take fuzzy uncerta...
MotivationMany real applications such as businesses and health generate large categorical datasets w...