FUZZY-SETS AND MEMBERSHIP FUNCTIONS BASED ON PROBABILITIES

Authors
Citation
G. Beliakov, FUZZY-SETS AND MEMBERSHIP FUNCTIONS BASED ON PROBABILITIES, Information sciences, 91(1-2), 1996, pp. 95-111
Citations number
14
Categorie Soggetti
Information Science & Library Science","Computer Science Information Systems
Journal title
ISSN journal
00200255
Volume
91
Issue
1-2
Year of publication
1996
Pages
95 - 111
Database
ISI
SICI code
0020-0255(1996)91:1-2<95:FAMFBO>2.0.ZU;2-Z
Abstract
Since the introduction of fuzzy set theory in 1965, several attempts t o establish the relationship between the grades of membership and the classical probability measures have been made. It turns out that there are different sources of fuzziness that must be dealt with differentl y. In the present paper we examine in detail two types of fuzziness, n amely, the fuzziness due to classification in an under- or overdimensi oned universe and the fuzziness due to the intersubject differences in opinion. For the former case the membership function is defined to be equal to the normalized distance from the point to the boundary of th e set in a specific metric. It is shown that this definition of the me mbership function is fully consistent with the max-min operations for the union/intersection; however, the membership function of the comple ment is defined differently from the usual ''one minus'' rule. The fuz ziness due to the intersubject differences turns out to be a simple av eraging process, and the explicit formulas for this case were derived. Several examples that illustrate the notions of fuzzy intervals and f uzzy numbers are given and the interpretations of the derived membersh ip curves are presented. The formulas for calculation of the membershi p function of a sum of fuzzy numbers and of a product of fuzzy numbers times a constant are derived. An extended definition of the measure o f fuzziness is presented and applied to the defined membership functio ns.