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 between Information and Uncertainty from the perspective of the so-called Informational Paradigm, according to which Information is constituted by “Informational ingredients”, specifically the “Empirical Information,”represented by sta- tistical data, and “Theoretical information”consisting of background knowledge and basic modeling assumptions. We then describe different kinds of uncertainty affecting the Infor- mation. Focusing on the uncertainty associated with a particular statistical methodology, i.e. Cluster Analysis, and adopting as theoretical platform the Informational Paradigm, we present a systematic literature review of different uncertainty-based clustering approaches -i.e. Fuzzy clustering, Possibilistic clustering, Shadowed clustering, Rough sets-based clus- tering, Intuitionistic fuzzy clustering, Evidential clustering, Credibilistic clustering, Type-2 fuzzy clustering, Neutrosophic clustering, Hesitant fuzzy clustering, Interval-based fuzzy clustering, and Picture fuzzy clustering. We thus show how all these clustering approaches are able of managing in different ways the uncertainty associated with the two compo- nents of the Informational Paradigm, i.e. the Empirical and Theoretical Information.

Informational Paradigm, management of uncertainty and theoretical formalisms in the clustering framework: A review / D'Urso, Pierpaolo. - In: INFORMATION SCIENCES. - ISSN 0020-0255. - 400-401:(2017), pp. 30-62. [10.1016/j.ins.2017.03.001]

Informational Paradigm, management of uncertainty and theoretical formalisms in the clustering framework: A review

D'URSO, Pierpaolo
2017

Abstract

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 between Information and Uncertainty from the perspective of the so-called Informational Paradigm, according to which Information is constituted by “Informational ingredients”, specifically the “Empirical Information,”represented by sta- tistical data, and “Theoretical information”consisting of background knowledge and basic modeling assumptions. We then describe different kinds of uncertainty affecting the Infor- mation. Focusing on the uncertainty associated with a particular statistical methodology, i.e. Cluster Analysis, and adopting as theoretical platform the Informational Paradigm, we present a systematic literature review of different uncertainty-based clustering approaches -i.e. Fuzzy clustering, Possibilistic clustering, Shadowed clustering, Rough sets-based clus- tering, Intuitionistic fuzzy clustering, Evidential clustering, Credibilistic clustering, Type-2 fuzzy clustering, Neutrosophic clustering, Hesitant fuzzy clustering, Interval-based fuzzy clustering, and Picture fuzzy clustering. We thus show how all these clustering approaches are able of managing in different ways the uncertainty associated with the two compo- nents of the Informational Paradigm, i.e. the Empirical and Theoretical Information.
2017
Credibilistic clustering; Empirical and theoretical information; Evidential clustering; Fuzzy clustering; Hesitant fuzzy clustering; Informational Paradigm; Interval-based fuzzy clustering; Intuitionistic fuzzy clustering; Neutrosophic clustering; Picture fuzzy clustering; Possibilistic clustering; Rough sets-based clustering; Shadowed clustering; Statistical reasoning; Type-2 fuzzy clustering; Uncertainty associated with empirical and theoretical information; Uncertainty formalisms; Uncertainty managing; Control and Systems Engineering; Theoretical Computer Science; Software; Computer Science Applications1707 Computer Vision and Pattern Recognition; Information Systems and Management; Artificial Intelligence
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Informational Paradigm, management of uncertainty and theoretical formalisms in the clustering framework: A review / D'Urso, Pierpaolo. - In: INFORMATION SCIENCES. - ISSN 0020-0255. - 400-401:(2017), pp. 30-62. [10.1016/j.ins.2017.03.001]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/973416
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