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Prof' Dr' Jaroslav Ramk

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Title: Prof' Dr' Jaroslav Ramk


1
Fuzzy sets II
  • Prof. Dr. Jaroslav RamĂ­k

2
Content
  • Extension principle
  • Extended binary operations with fuzzy numbers
  • Extended operations with L-R fuzzy numbers
  • Extended operations with t-norms
  • Probability, possibility and fuzzy measure
  • Probability and possibility of fuzzy event
  • Fuzzy sets of the 2nd type
  • Fuzzy relations

3
Extension principle (EP)by L. Zadeh, 1965
  • EP makes possible to extend algebraical
    operations with NUMBERS to FUZZY SETS
  • Even more EP makes possible to extend REAL
    FUNCTIONS of real variables to FUZZY FUNCTIONS
    with fuzzy variables
  • Even more EP makes possible to extend CRISP
    CONCEPTS to FUZZY CONCEPTS
  • (e.g. relations, convergence, derivative,
    integral, etc.)

4
Example 1. Addition of fuzzy numbers
EP
5
Theorem 1.
  • Let
  • the operation ? denotes or (add or multiply)
  • - fuzzy numbers, ??0,1
  • -
    ?-cuts
  • Then is defined by its ?-cuts
    as follows

???0,1
6
Extension principle for functions
  • X1, X2,,Xn, Y - sets
  • n - fuzzy sets on Xi , i 1,2,,n
  • g X1?X2 ??Xn ? Y - function of n variables
  • i.e. (x1,x2 ,,xn ) ? y g (x1,x2 ,,xn )
  • Then the extended function
  • is defined by

7
Remarks
  • g-1(y) (x1,x2 ,,xn ) y g (x1,x2 ,,xn )
    - co-image of y
  • Special form of EP g (x1,x2) x1x2 or g
    (x1,x2) x1x2
  • Instead of Min any t-norm T can be used - more
    general for of EP

8
Example 2. Fuzzy Min and Max
9
Extended operations with L-R fuzzy numbers
  • L, R 0,?) ? 0,1 - decreasing functions -
    shape functions
  • L(0) R(0) 1, m - main value, ? gt 0, ? gt 0
  • (m, ?, ?)LR - fuzzy number of L-R-type if

Left spread Right spread
10
Example 3. L-R fuzzy number About eight
11
Example 4.
  • L(u) Max(0,1 - u) R(u)

12
Theorem 2.
Addition
  • Let
  • (m,?,?)LR , (n,?,?)LR
  • where L, R are shape functions
  • Then is defined as
  • Example (2,3,4)LR (1,2,3)LR (3,5,7)LR

13
Opposite FN
  • (m,?,?)LR - FN of L-R-type
  • (m,?, ?)LR - opposite FN of L-R-type to

Fuzzy minus
14
Theorem 3.
Subtraction
  • Let
  • (m,?,?)LR , (n,?,?)LR
  • where L, R are shape functions
  • Then is defined as
  • Example (2,3,4)LR (1,2,3)LR (1,6,6)LR

15
Example 5. Subtraction
16
Theorem 4.
Multiplication
  • Let
  • (m,?,?)LR , (n,?,?)LR
  • where L, R are shape functions
  • Then is defined by
    approximate formulae
  • Example by 1. (2,3,4)LR (1,2,3)LR ? (2,7,10)LR

1.
2.
17
Example 6. Multiplication

(2,1,2)LR , (4,2,2)LR
? (8,8,12)LR
? formula 1. - - - - formula 2. . exact
function
18
Inverse FN
  • (m,?,?)LR gt 0 - FN of L-R-type
  • -
    approximate formula 1
  • - approximate
    formula 2

We define inverse FN only for positive (or
negative) FN !
19
Example 7. Inverse FN

(2,1,2)LR
f.2
f.1
? formula 1. - - - - formula 2. . exact
function
20
Division
  • (m,?,?)LR , (n,?,?)LR gt 0
  • where L, R are shape functions
  • Define
  • Combinations of approximate formulae, e.g.

21
Probability, possibility and fuzzy measure
  • Sigma Algebra (?-Algebra) on ?
  • F - collection of classical subsets of the set ?
  • satisfying
  • (A1) ? ? F
  • (A2) if A ? F then CA ? F
  • (A3) if Ai ? F, i 1, 2, ... then ?i Ai ? F

? - elementary space (space of outcomes -
elementary events) F - ?-Algebra of events of ?
22
Probability measure
  • F - ?-Algebra of events of ?
  • p F ? 0,1 - probability measure on F
  • satisfying
  • (W1) if A ? F then p(A) ? 0
  • (W2) p(?) 1
  • (W3) if Ai ? F , i 1, 2, ..., Ai ?Aj ?, i?j
  • then p(?i Ai ) ?i p(Ai ) - ?-additivity
  • (W3) if A,B ? F , A?B ?,
  • then p(A?B ) p(A ) p(B) - additivity

23
Fuzzy measure
  • F - ?-Algebra of events of ?
  • g F ? 0,1 - fuzzy measure on F
  • satisfying
  • (FM1) p(?) 0
  • (FM2) p(?) 1
  • (FM3) if A,B ? F , A?B then p(A) ? p(B) -
    monotonicity
  • (FM4) if A1, A2,... ? F , A1? A2 ? ...
  • then g(Ai ) g( Ai )
    - continuity

24
Properties
  • Additivity condition (W3) is stronger than
    monotonicity (MP3) continuity (MP4) i.e.
  • (W3) ? (MP3) (MP4)
  • Consequence Any probability measure is a fuzzy
    measure but not contrary

25
Possibility measure
  • P(?) - Power set of ? (st of all subsets of ?)
  • ? P(?) ? 0,1 - possibility measure on ?
  • satisfying
  • (P1) ?(?) 0
  • (P2) ?(?) 1
  • (P3) if Ai ? P(?) , i 1, 2, ...
  • then ?(?i Ai ) Supi p(Ai )
  • (P3) if A,B ? P(?) ,
  • then ?(A?B ) Max?(A ), ?(B)

26
Properties
  • Condition (P3) is stronger than monotonicity
    (MP3) continuity (MP4) i.e.
  • (P3) ? (MP3) (MP4)
  • Consequence Any possibility measure is a fuzzy
    measure but not contrary

27
Example 8.
? A?B?C F ?, A, B, C, A?B, B?C, A?C, A?B?C
28
Possibility distribution
  • ? - possibility measure on P(?)
  • Function ? ? ? 0,1 defined by
  • ?(x) ?(x) for ? x??
  • is called a possibility distribution on ?
  • Interpretation ? is a membership function of a
    fuzzy set , i.e. ?(x) ?A(x) ?x ??,
  • ?A(x) is the possibility that x belongs to ?

29
Probability and possibility of fuzzy event
  • Example 1 What is the possibility (probability)
    that tomorrow will be a nice weather ?
  • Example 2 What is the possibility (probability)
    that the profit of the firm A in 2003 will be
    high ?
  • nice weather, high profit - fuzzy events

30
Probability of fuzzy event Finite universe
  • ? x1, ,xn - finite set of elementary outcomes
  • F - ?-Algebra on ?
  • P - probability measure on F
  • - fuzzy set of ?, with the membership
  • function ?A(x) - fuzzy event,
  • A?? F for ?? ?0,1
  • P( ) - probability of fuzzy
    event

31
Probability of fuzzy event Real universe
  • ? R - real numbers - set of elementary outcomes
  • F - ?-Algebra on R
  • P - probability measure on F given by density
    fction g
  • - fuzzy set of R, with the membership
  • function ?A(x) - fuzzy event
  • A?? F for ?? ?0,1
  • P( ) - probability of fuzzy
    event

32
Example 9.
  • (4, 1, 2)LR L(u) R(u) e-u

- around 4
- density function of random value
0,036
33
Possibility of fuzzy event
  • ? - set of elementary outcomes
  • ? ? ? 0,1 - possibility distribution
  • - fuzzy set of ?, with the membership
  • function ?A(x) - fuzzy event
  • A?? F for ?? ?0,1
  • P( ) -
    possibility of fuzzy event

34
Fuzzy sets of the 2nd type
  • The function value of the membership function is
    again a fuzzy set (FN) of 0,1

35
Example 10.
36
Example 11.
Linguistic variable Stature- Height of the body
37
Fuzzy relations
  • X - universe
  • - (binary) fuzzy (valued) relation on X
    fuzzy set on X?X
  • is given by the membership function ?R X?X ?
    0,1
  • FR is
  • Reflexive ?R (x,x) 1 ?x?X
  • Symmetric ?R (x,y) ?R (y,x) ?x,y?X
  • Transitive SupzMin?R (x,z), ?R (z,y) ? ?R
    (x,y)
  • Equivalence reflexive symmetric transitive

38
Example 12.
Binary fuzzy relation x is much greater
than y
e.g. ?R(8,1) 7/9 0,77 - is antisymmetric
If ?R (x,y) gt 0 then ?R (y,x) 0 ?x,y?X
39
Example 13.
Binary fuzzy relation x is similar to y
X 1,2,3,4,5
is equivalence !
40
Summary
  • Extension principle
  • Extended binary operations with fuzzy numbers
  • Extended operations with L-R fuzzy numbers
  • Extended operations with t-norms
  • Probability, possibility and fuzzy measure
  • Probability and possibility of fuzzy event
  • Fuzzy sets of the 2nd type
  • Fuzzy relations

41
References
  • 1 J. RamĂ­k, M. Vlach Generalized concavity in
    fuzzy optimization and decision analysis. Kluwer
    Academic Publ. Boston, Dordrecht, London, 2001.
  • 2 H.-J. Zimmermann Fuzzy set theory and its
    applications. Kluwer Academic Publ. Boston,
    Dordrecht, London, 1996.
  • 3 H. Rommelfanger Fuzzy Decision Support -
    Systeme. Springer - Verlag, Berlin Heidelberg,
    New York, 1994.
  • 4 H. Rommelfanger, S. Eickemeier
    Entscheidungstheorie - Klassische Konzepte und
    Fuzzy - Erweiterungen, Springer - Verlag, Berlin
    Heidelberg, New York, 2002.
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