2019
DOI: 10.1002/wics.1480
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Soft clustering

Abstract: Clustering is one of the most used tools in data analysis. In the last decades, due to the increasing complexity of data, soft clustering has received a great deal of attention. There exist different approaches that can be considered as soft. The most known is the fuzzy approach that consists in assigning objects to clusters with membership degrees, depending on the dissimilarities between each object and all the prototypes, ranging in the unit interval. Closely related to the fuzzy approach, there is the poss… Show more

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Cited by 24 publications
(15 citation statements)
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“…Hence, the traits of the 68 governance indicators are assumed to have probability distributions that differ between the groups. Finite mixture modelling does not perform a hard assignment of countries into groups (as you would get with, for example, k‐means cluster analyses), but rather a probabilistic, or soft, assignment (Ferraro & Giordani, 2019). Finite mixture modelling avoids what can amount to subjective choices in hard clustering solutions and instead offers a way to determine the appropriate cluster number through maximum likelihood‐based model selection (Stahl & Sallis, 2012).…”
Section: Methodsmentioning
confidence: 99%
See 2 more Smart Citations
“…Hence, the traits of the 68 governance indicators are assumed to have probability distributions that differ between the groups. Finite mixture modelling does not perform a hard assignment of countries into groups (as you would get with, for example, k‐means cluster analyses), but rather a probabilistic, or soft, assignment (Ferraro & Giordani, 2019). Finite mixture modelling avoids what can amount to subjective choices in hard clustering solutions and instead offers a way to determine the appropriate cluster number through maximum likelihood‐based model selection (Stahl & Sallis, 2012).…”
Section: Methodsmentioning
confidence: 99%
“…In finite mixture modelling, the data are considered as coming from a mixture of probability density distributions (Stahl & Sallis, 2012). Each mixture component density represents a cluster or group (Ferraro & Giordani, 2019). Hence, the traits of the 68 governance indicators are assumed to have probability distributions that differ between the groups.…”
Section: Identifying Groups: Model-based Clusteringmentioning
confidence: 99%
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“…Hard clustering (classical approach) assigns data point or object to just one cluster. On the other hand, the soft clustering approach assigns data points or object to more than one cluster [55]. The soft flat clustering method is based on the membership value where a document may be assigned to more than one cluster.…”
Section: Hard and Softmentioning
confidence: 99%
“…Then by defining an idea of fuzzy partition, an algorithm using a fuzzy objective function (Ruspini, 1969) has been proposed and developed for several extensions for data types, including more flexible cluster forms (Gath & Geva, 1989; Gustafson & Kessel, 1978) or feature of space of data (Ienco & Bordogna, 2018). In addition, clustering utilizing other representations of uncertainty based on the idea of fuzziness, such as clustering using the concept of possibility (Krishnapuram & Keller, 1993) or clustering using the idea of rough sets (Pawlak, 1982), have been developed and beyond the framework of the fuzzy clustering, categorization of clustering with uncertainty boundaries of clusters has been discussed (Ferraro & Giordani, 2020; Klawonn et al, 2015). Moreover, including adaptable fuzzy relations to clustering, several methods have been developed.…”
Section: Fuzzy Clusteringmentioning
confidence: 99%