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Zadanie 1 Graduation of fuzzy sets. First Determine the membership values of individuals, whose age is given, the set of "old." Apply the following criterion for membership function:

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Zadanie 1

Graduation of fuzzy sets. First Determine the membership values of individuals, whose age is given, the set of "old."

Apply the following criterion for membership function:

name age(x) µage(x)

Ewa 33

Ola 43

Waldek 44 Marek 51

Anna 55

Mirela 57 Grzegorz 61 Marcin 67 Karol 85 Kasia 88

Then, knowing that fuzzy sets can be graded calculate the value of membership function for each person to set a "very old" based on the value of membership function of the "old":

0 0,2 0,4 0,6 0,8 1 1,2

33 43 44 51 55 57 61 67 85 88

"old"

"very old"

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