چکیده
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In deterministic DEA models, precise values are assigned to input
and output data while they are intrinsically subjected to some degree of uncer-
tainty. Most studies in this area are based on the assumption that inputs and
outputs are equipped with some pre-known knowledge that enables one to use
probability theory or fuzzy theory. In the lack of such data, one has to trust
on the experts’ opinions, which can be considered as a sort of uncertainty.
In this situation, the axiomatic approach of uncertainty theory initiated by
Liu in 2007 could be an adequate powerful tool. Applying this theory, Wen
et al. (2014) suggested an uncertain DEA model while it has the disadvan-
tage of pessimism. In this paper, we introduce another uncertain DEA model
with the objective of acquiring the highest belief degree that the evaluated
DMU is efficient. We also apply this model in ranking of the evaluated DMUs.
Implementation of the model on different illustrative examples reveals that
the ranks of DMUs are almost-stable in our model. This observation states
that the rank of a DMU may roughly alternate with respect to the variation
of minimum belief degrees. Our proposed model also compensates the rather
optimistic point of view in the Wen et al. model that identifies all DMUs as
efficient for higher belief degrees.
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