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Chapter 3 FUZZY RELATION AND COMPOSITION
Chi-Yuan Yeh
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Outline Product set Crisp / fuzzy relations
Composition / decomposition Projection / cylindrical extension Extension of fuzzy set / fuzzy relation Fuzzy distance between fuzzy sets
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Product set
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Product set
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Product set A={a1,a2} B={b1,b2} C={c1,c2}
AxBxC = {(a1,b1,c1),(a1,b1,c2),(a1,b2,c1),(a1,b2,c2),(a2,b1,c1),(a2,b1,c2),(a2,b2,c1), (a2,b2,c2)}
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Crisp relation A relation among crisp sets is a subset of the Cartesian product. It is denoted by . Using the membership function defines the crisp relation R :
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Fuzzy relation A fuzzy relation is a fuzzy set defined on the Cartesian product of crisp sets A1, A2, ..., An where tuples (x1, x2, ..., xn) may have varying degrees of membership within the relation. The membership grade indicates the strength of the relation present between the elements of the tuple.
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Representation methods
Bipartigraph (Crisp) (Fuzzy)
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Representation methods
Matrix (Crisp) (Fuzzy)
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Representation methods
Digraph (Crisp) (Fuzzy)
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Domain and range of fuzzy relation
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Domain and range of fuzzy relation
Fuzzy matrix
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Operations on fuzzy matrices
Sum: Example
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Operations on fuzzy matrices
Max product: C = A・B=AB= Example
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Max product Example
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Max product Example
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Max product Example
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Operations on fuzzy matrices
Scalar product: Example
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Operations on fuzzy relations
Union relation For n relations
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Union relation Example
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Operations on fuzzy relations
Intersection relation For n relations
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Intersection relation
Example
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Operations on fuzzy relations
Complement relation: Example
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Composition of fuzzy relations
Max-min composition Example
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Composition of fuzzy relations
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Composition of fuzzy relations
Example
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Composition of fuzzy relations
Example
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Composition of fuzzy relations
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α-cut of fuzzy relation
Example
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α-cut of fuzzy relation
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Decomposition of relation
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Decomposition of relation
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Decomposition of relation
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Projection / cylindrical extension
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Projection / cylindrical extension
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Projection in n dimension
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Projection
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Projection
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Projection
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Projection
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Projection / cylindrical extension
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Cylindrical extension
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Cylindrical extension
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Cylindrical extension
x1 = 0 : x,x1 = 1 : y x2 = 0 : a, x2 = 1 : b x3 = 0 : α, x3 = 1 : β
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Cylindrical extension
Join(R123’,R123’’) = C(R123’)∩C(R123’’) = Min(R123’,R123’’) = R123’’’
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Extension of fuzzy set A crisp function Let then
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Extension of fuzzy set There are two universal sets And We can obtain B by A and R, use
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Extension of fuzzy set By
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Extension of fuzzy set If A is a fuzzy set and R is We can also get B by A an R, use
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Extension of fuzzy set By use
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Extension of fuzzy set If A is a fuzzy set and R is a fuzzy relation We can get B by using
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Extension of fuzzy set By
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Extension of fuzzy set Extension of a crisp relation
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Extension of fuzzy set
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Extension by fuzzy relation
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Extension by fuzzy relation
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Extension by fuzzy relation
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Extension by fuzzy relation
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Extension by fuzzy relation
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Extension by fuzzy relation
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Fuzzy distance between fuzzy sets
nonnegative
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Fuzzy distance between fuzzy sets
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Fuzzy distance between fuzzy sets
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Fuzzy distance between fuzzy sets
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Fuzzy distance between fuzzy sets
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Thanks for your attention!
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