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Dempster/Shaffer Theory of Evidence

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We will need to define some function m such that. m: P(U) [0 , 1] ... The function is well defined of the weight of conflict is 1. m1(X) * m2(Y) = 1. X Y ... – PowerPoint PPT presentation

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Title: Dempster/Shaffer Theory of Evidence


1
Dempster/ShafferTheory of Evidence
  • CIS 479/579
  • Bruce R. Maxim
  • UM-Dearborn

2
What is it?
  • Means of manipulating degrees of belief that does
    not require B(A) B(A) to be equal to 1
  • This means that it is possible to believe that
    something could be both true and false to some
    degree

3
Example
  • Consider a situation in which you have three
    competing hypotheses x, y, z
  • There are 8 combinations for true hypotheses
  • x y z
  • x y x z y z
  • x y z

4
Example
  • Initially you might decide that without any
    evidence that all three hypotheses are true and
    assign a weight of 1.0 to the set x y z all
    other sets would be assigned weights of 0.0
  • With each new pieces of evidence you would begin
    to decrease the weight assigned to the set x y
    z and increase some of the other weights making
    sure that the sum of all weights is still 1.0

5
Formally
  • If A is a proposition like the sum of all spots
    displayed on a pair of 6 sided dice is 7 then set
    of correct hypotheses would be designated as U
  • The power set of U is made up of all possible
    subsets of U including both U and the empty set
  • U ? P(U) ? ? P(U)

6
Formally
  • We will need to define some function m such that
  • m P(U) ? 0 , 1
  • This function needs to satisfy two conditions
  • m(?) 0
  • m(A) 1
  • A?U

7
Formally
  • The function m is called a basic probability
    density function
  • Evidence is regarded as certain if
  • m(F) 1
  • So for any A ? F
  • m(A) 0

8
Formally
  • Things become trickier if F is not a singleton
    set and F ? A ? ?
  • Each subset a where m(A) ? 0 is called a focal
    element of P(U)

9
Rule of Combination
  • Orthogaonal sum m1? m2
  • If A ? ?
  • m1? m2 (A) ? m1(X) m2(Y)
  • X ? Y A
  • 1 - ? m1(X)
    m2(Y)
  • X ?
    Y ?

10
Rule of Combination
  • If A ? then m1? m2 (A) 0
  • The function is well defined of the weight of
    conflict is 1
  • ? m1(X) m2(Y) 1
  • X ? Y ?

11
Rule of Combination
  • The denominator of the function
  • 1 - ? m1(X) m2(Y)
  • X ? Y ?
  • is sometimes denoted as 1/k and is
  • used as a normalization factor
  • If 1/k 0 the then the weight of conflict if 1
    and m1 and m2 are contradictory and m1? m2 is
    undefined

12
Belief
  • There is also a defined belief function
  • Belief P(U) ? 0 , 1
  • Belief(A) ? m(B)
  • B?A
  • This says that the Belief(A) is the sum of all
    weights of the subsets formed from A

13
Doubt and Plausibility
  • We can define
  • Doubt(A) Belief(A)
  • Plausibility(A) 1 - Doubt(A)
  • 1 - Belief(A)

14
Belief and Plausibility
  • Belief(?) 0
  • Plausibility(?) 0
  • Belief(U) 1
  • Plausibility(U) 1
  • Plausibility(A) gt Belief(A)

15
Belief and Plausibility
  • Belief(A) Belief(A) lt 1
  • Plausibility(A) Plausibility(A) gt 1
  • If A ? B then
  • Belief(A) lt Belief(B)
  • Plausibility(A) lt Plausibility(B)

16
Example
  • S snow
  • R rain
  • D dry
  • U S R D
  • P(U) has 8 elements
  • Assume two pieces of evidence
  • Temperature is below freezing
  • Barometric pressure is falling (e.g. storm likely)

17
The following table might be constructed
The row sums for Mfreeze and Mstorm is 1.0 Mboth
is computed from Mfreeze ? Mstorm
18
Example
  • Mboth (A) ? Mfreeze(X) Mstorm(Y)
  • X ? Y A
  • 1 - ? Mfreeze(X) Mstorm(Y)
  • X ? Y ?

19
Example
  • Using our table
  • Belief(S R) ? m(B)
  • Mboth(S R)
  • Mboth(S)
  • Mboth(R)
  • 0.18 0.282 0.282
    0.744
  • Belief(S R D) is still 1.0 (sum of Mboth row)

20
Example
  • Using our table and Mfreeze
  • Belief(S R) ? m(B)
  • Mfreeze(S R)
  • Mfreeze(S)
  • Mfreeze(R)
  • 0.2 0.1 0.2 0.5

21
Example
  • Using our table and only Mstorm
  • Belief(S R) ? m(B)
  • Mstorm(S R)
  • Mstorm(S)
  • Mstorm(R)
  • 0.3 0.1 0.2 0.6

22
Example
  • Our belief based on the combined evidence was
    stronger than either belief computed from a
    single source of evidence
  • Note also that Mboth causes larger belief gains
    from S and R than for D

23
Example
  • If A S R then
  • Doubt(A) Mboth(D) 0.128
  • Plausibility(A) 1 Doubt(A)
  • 1 0.128
  • 0.872
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