Probabilistic linguistic multi-criteria decision-making based on double information under imperfect conditions
In this paper, we study four projection-based normalization models and a decision-making method for probabilistic linguistic multi-criteria decision-making problems, in which the assessment information about an alternative with respect to a criterion is incomplete and the criteria weight values are...
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Veröffentlicht in: | Fuzzy optimization and decision making 2020-12, Vol.19 (4), p.391-433 |
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description | In this paper, we study four projection-based normalization models and a decision-making method for probabilistic linguistic multi-criteria decision-making problems, in which the assessment information about an alternative with respect to a criterion is incomplete and the criteria weight values are not precisely known but the ranges are available. To apply the projection to the probabilistic linguistic environment, we propose the equivalent expression forms of the probabilistic linguistic term sets, and then the equivalent transformation functions between the probabilistic linguistic term set and its associated vector are presented to realize the conversion between the operations on the probabilistic linguistic term sets and the operations on their associated vectors. Next, the projection formulas of the probabilistic linguistic term sets are introduced to build different normalization models for different types of uncertain probabilistic linguistic multi-criteria decision-making problems. After that, a new deviation degree formula is proposed to account for the rationality and validity of the normalization models from the theoretical perspective. Finally, the probabilistic linguistic two-step method is used to determine the criteria weights values and rank the alternatives, and the validity of these projection-based normalization models and our proposed decision-making method are illustrated by a case about the performance assessment of data hiding techniques. |
doi_str_mv | 10.1007/s10700-020-09325-w |
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subjects | Artificial Intelligence Calculus of Variations and Optimal Control Optimization Decision making Equivalence Linguistics Mathematical Logic and Foundations Mathematics Mathematics and Statistics Multiple criteria decision making Multiple criterion Operations Research/Decision Theory Optimization Performance assessment Probability Theory and Stochastic Processes Projection |
title | Probabilistic linguistic multi-criteria decision-making based on double information under imperfect conditions |
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