The truth values of traditional set theory is ____________ and that of fuzzy set is __________

a) Either 0 or 1, between 0 & 1

b) Between 0 & 1, either 0 or 1

c) Between 0 & 1, between 0 & 1

d) Either 0 or 1, either 0 or 1

1 Answer

Answer :

a) Either 0 or 1, between 0 & 1

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