4.7 Article

An aggregation method for solving group multi-criteria decision-making problems with single-valued neutrosophic sets

期刊

APPLIED SOFT COMPUTING
卷 71, 期 -, 页码 715-727

出版社

ELSEVIER SCIENCE BV
DOI: 10.1016/j.asoc.2018.07.020

关键词

Group multi-criteria decision-making; Uncertainty modeling; Reliability; Single-valued neutrosophic set; Fuzzy seta

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We develop a novel method that uses single-valued neutrosophic sets (NSs) to handle independent multi source uncertainty measures affecting the reliability of experts' assessments in group multi-criteria decision-making (GMCDM) problems. NSs are characterized by three independent membership magnitudes (falsity, truth and indeterminacy) and can be employed to model situations characterized by complex uncertainty. In the proposed approach, the neutrosophic indicators are defined to explicitly reflect DMs' credibility (voting power), inconsistencies/errors inherent to the assessing process, and DMs' confidence in their own evaluation abilities. In contrast with most of the existing studies, single-valued NSs are used not only to formalize the uncertainty affecting DMs' priorities, but also to aggregate them into group estimates without the need to define neutrosophic decision matrices or aggregation operators. Group estimates are synthesized into crisp evaluations through a two-step deneutrosophication process that converts (1) single-valued NSs in fuzzy sets (FSs) using the standard Euclidean metric and (2) FSs in representative crisp values using defuzzification. Theoretical and practical implications are discussed to highlight the flexibility of the proposed approach. An illustrative example shows how taking into account the uncertainty inherent to the experts' evaluations may deeply affect the results obtained in a standard fuzzy environment even when dealing with very simple ranking problems. (c) 2018 Elsevier B.V. All rights reserved.

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