Introducing Uncertainty-Based Dynamics in MADM Environments
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2023
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Di Caprio, D., Santos Arteaga, F.J. (2023). Introducing Uncertainty-Based Dynamics in MADM Environments. In: Aliev, R.A., Kacprzyk, J., Pedrycz, W., Jamshidi, M., Babanli, M.B., Sadikoglu, F. (eds) 15th International Conference on Applications of Fuzzy Systems, Soft Computing and Artificial Intelligence Tools – ICAFS-2022. ICAFS 2022. Lecture Notes in Networks and Systems, vol 610. Springer, Cham. https://doi.org/10.1007/978-3-031-25252-5_21
Abstract
. One of the main problems faced by the literature on Multi-Attribute
Decision-Making (MADM) methods, which constitutes an inherent assumption
that remains undiscussed through the different publications, is the fact that rankings are definitive. As a result, these models do not account for any of the consequences derived from the uncertainty inherent to the evaluations or the potentially
strategic reports delivered by the experts. That is, once the ranking is computed,
the decision makers (DMs) should select the first alternative, concluding the applicability and contribution of the corresponding model. There are no potential regret
or uncertainty interactions triggered by the quality of the reports or their credibility. However, the results of the ranking are not always those preferred by the
DMs, who may have to proceed through several alternatives, particularly if the
evaluations provided by the experts fail to convey the actual value of the corresponding characteristics. This problem has not been considered in the MADM
literature, which has incorporated fuzziness and imprecision to its models, but
not accounted for the consequences of credibility in terms of regrettable choices
and the combinatorial framework that arises as soon as this possibility is incorporated into the analysis. We define a MADM setting designed to demonstrate
the ranking differences arising as DMs incorporate the potential realizations from
an uncertain evaluation environment in their choices. We illustrate the substantial
ranking modifications triggered by the subsequent dynamic and regret considerations while introducing important potential extensions within standard MADM
techniques.