1999
DOI: 10.1016/s0165-0114(97)00337-0
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Defuzzification: criteria and classification

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Cited by 646 publications
(306 citation statements)
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“…Possibility theory and defuzzification Possibilistic mean values can be defined using Choquet integrals with respect to possibility and necessity measures [65,37], and come close to defuzzification methods [134]. A fuzzy interval is a fuzzy set of reals whose membership function is unimodal and upper-semi continuous.…”
Section: Probability-possibility Transformationsmentioning
confidence: 99%
“…Possibility theory and defuzzification Possibilistic mean values can be defined using Choquet integrals with respect to possibility and necessity measures [65,37], and come close to defuzzification methods [134]. A fuzzy interval is a fuzzy set of reals whose membership function is unimodal and upper-semi continuous.…”
Section: Probability-possibility Transformationsmentioning
confidence: 99%
“…The quantitative score is obtained by the assessment of the upper bound of α-cut at 0.8. This α-cut value was chosen by the experts by considering the correspondence between the membership level and the fractile of a probability distribution [36][37] and the analysis of defuzzification methods that provide real values [38]. Indeed, the experts wanted to select the defuzzification value that corresponded to a value between a "mean probable" and "probable",…”
Section: Possibility Expression Of Imperfect Assessmentsmentioning
confidence: 99%
“…We know a number of defuzzification procedures from the literature (Van Leekwijck & Kerre, 1999). Continuous, linear functionals on R give a class of defuzzification functionals .…”
Section: Defuzzification Functionalsmentioning
confidence: 99%
“…In the course of this operation to a membership function representing a classical fuzzy set a real number is attached. We know a number of defuzzification procedures from the literature, such as: FOM (first of maximum), LOM (last of maximum), MOM (middle of maximum), RCOM (random choice of maximum), COG (center of gravity), and others which were extensively discussed by the authors of (Van Leekwijck & Kerre, 1999). They have classified the most widely used defuzzification techniques into different groups, and examined the prototypes of each group with respect to the defuzzification criteria.…”
Section: Approximation Of Defuzzification Functionalsmentioning
confidence: 99%