Uncertainty theory (Liu)

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The uncertainty theory invented by Baoding Liu[1] is a branch of mathematics based on normality, monotonicity, self-duality, countable subadditivity, and product measure axioms.[clarification needed]

Mathematical measures of the likelihood of an event being true include probability theory, capacity, fuzzy logic, possibility, and credibility, as well as uncertainty.

Four axioms edit

Axiom 1. (Normality Axiom)  .

Axiom 2. (Self-Duality Axiom)  .

Axiom 3. (Countable Subadditivity Axiom) For every countable sequence of events  , we have

 .

Axiom 4. (Product Measure Axiom) Let   be uncertainty spaces for  . Then the product uncertain measure   is an uncertain measure on the product σ-algebra satisfying

 .

Principle. (Maximum Uncertainty Principle) For any event, if there are multiple reasonable values that an uncertain measure may take, then the value as close to 0.5 as possible is assigned to the event.

Uncertain variables edit

An uncertain variable is a measurable function ξ from an uncertainty space   to the set of real numbers, i.e., for any Borel set B of real numbers, the set   is an event.

Uncertainty distribution edit

Uncertainty distribution is inducted to describe uncertain variables.

Definition: The uncertainty distribution   of an uncertain variable ξ is defined by  .

Theorem (Peng and Iwamura, Sufficient and Necessary Condition for Uncertainty Distribution): A function   is an uncertain distribution if and only if it is an increasing function except   and  .

Independence edit

Definition: The uncertain variables   are said to be independent if

 

for any Borel sets   of real numbers.

Theorem 1: The uncertain variables   are independent if

 

for any Borel sets   of real numbers.

Theorem 2: Let   be independent uncertain variables, and   measurable functions. Then   are independent uncertain variables.

Theorem 3: Let   be uncertainty distributions of independent uncertain variables   respectively, and   the joint uncertainty distribution of uncertain vector  . If   are independent, then we have

 

for any real numbers  .

Operational law edit

Theorem: Let   be independent uncertain variables, and   a measurable function. Then   is an uncertain variable such that

 

where   are Borel sets, and   means   for any .

Expected Value edit

Definition: Let   be an uncertain variable. Then the expected value of   is defined by

 

provided that at least one of the two integrals is finite.

Theorem 1: Let   be an uncertain variable with uncertainty distribution  . If the expected value exists, then

 
 

Theorem 2: Let   be an uncertain variable with regular uncertainty distribution  . If the expected value exists, then

 

Theorem 3: Let   and   be independent uncertain variables with finite expected values. Then for any real numbers   and  , we have

 

Variance edit

Definition: Let   be an uncertain variable with finite expected value  . Then the variance of   is defined by

 

Theorem: If   be an uncertain variable with finite expected value,   and   are real numbers, then

 

Critical value edit

Definition: Let   be an uncertain variable, and  . Then

 

is called the α-optimistic value to  , and

 

is called the α-pessimistic value to  .

Theorem 1: Let   be an uncertain variable with regular uncertainty distribution  . Then its α-optimistic value and α-pessimistic value are

 ,
 .

Theorem 2: Let   be an uncertain variable, and  . Then we have

  • if  , then  ;
  • if  , then  .

Theorem 3: Suppose that   and   are independent uncertain variables, and  . Then we have

 ,

 ,

 ,

 ,

 ,

 .

Entropy edit

Definition: Let   be an uncertain variable with uncertainty distribution  . Then its entropy is defined by

 

where  .

Theorem 1(Dai and Chen): Let   be an uncertain variable with regular uncertainty distribution  . Then

 

Theorem 2: Let   and   be independent uncertain variables. Then for any real numbers   and  , we have

 

Theorem 3: Let   be an uncertain variable whose uncertainty distribution is arbitrary but the expected value   and variance  . Then

 

Inequalities edit

Theorem 1(Liu, Markov Inequality): Let   be an uncertain variable. Then for any given numbers   and  , we have

 

Theorem 2 (Liu, Chebyshev Inequality) Let   be an uncertain variable whose variance   exists. Then for any given number  , we have

 

Theorem 3 (Liu, Holder's Inequality) Let   and   be positive numbers with  , and let   and   be independent uncertain variables with   and  . Then we have

 

Theorem 4:(Liu [127], Minkowski Inequality) Let   be a real number with  , and let   and   be independent uncertain variables with   and  . Then we have

 

Convergence concept edit

Definition 1: Suppose that   are uncertain variables defined on the uncertainty space  . The sequence   is said to be convergent a.s. to   if there exists an event   with   such that

 

for every  . In that case we write  ,a.s.

Definition 2: Suppose that   are uncertain variables. We say that the sequence   converges in measure to   if

 

for every  .

Definition 3: Suppose that   are uncertain variables with finite expected values. We say that the sequence   converges in mean to   if

 .

Definition 4: Suppose that   are uncertainty distributions of uncertain variables  , respectively. We say that the sequence   converges in distribution to   if   at any continuity point of  .

Theorem 1: Convergence in Mean   Convergence in Measure   Convergence in Distribution. However, Convergence in Mean   Convergence Almost Surely   Convergence in Distribution.

Conditional uncertainty edit

Definition 1: Let   be an uncertainty space, and  . Then the conditional uncertain measure of A given B is defined by

 
 

Theorem 1: Let   be an uncertainty space, and B an event with  . Then M{·|B} defined by Definition 1 is an uncertain measure, and  is an uncertainty space.

Definition 2: Let   be an uncertain variable on  . A conditional uncertain variable of   given B is a measurable function   from the conditional uncertainty space   to the set of real numbers such that

 .

Definition 3: The conditional uncertainty distribution   of an uncertain variable   given B is defined by

 

provided that  .

Theorem 2: Let   be an uncertain variable with regular uncertainty distribution  , and   a real number with  . Then the conditional uncertainty distribution of   given   is

 

Theorem 3: Let   be an uncertain variable with regular uncertainty distribution  , and   a real number with  . Then the conditional uncertainty distribution of   given   is

 

Definition 4: Let   be an uncertain variable. Then the conditional expected value of   given B is defined by

 

provided that at least one of the two integrals is finite.

References edit

  1. ^ Liu, Baoding (2015). Uncertainty theory: an introduction to its axiomatic foundations. Springer uncertainty research (4th ed.). Berlin: Springer. ISBN 978-3-662-44354-5.

Sources edit

  • Xin Gao, Some Properties of Continuous Uncertain Measure, International Journal of Uncertainty, Fuzziness and Knowledge-Based Systems, Vol.17, No.3, 419-426, 2009.
  • Cuilian You, Some Convergence Theorems of Uncertain Sequences, Mathematical and Computer Modelling, Vol.49, Nos.3-4, 482-487, 2009.
  • Yuhan Liu, How to Generate Uncertain Measures, Proceedings of Tenth National Youth Conference on Information and Management Sciences, August 3–7, 2008, Luoyang, pp. 23–26.
  • Baoding Liu, Uncertainty Theory, 4th ed., Springer-Verlag, Berlin, [1] 2009
  • Baoding Liu, Some Research Problems in Uncertainty Theory, Journal of Uncertain Systems, Vol.3, No.1, 3-10, 2009.
  • Yang Zuo, Xiaoyu Ji, Theoretical Foundation of Uncertain Dominance, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 827–832.
  • Yuhan Liu and Minghu Ha, Expected Value of Function of Uncertain Variables, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 779–781.
  • Zhongfeng Qin, On Lognormal Uncertain Variable, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 753–755.
  • Jin Peng, Value at Risk and Tail Value at Risk in Uncertain Environment, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 787–793.
  • Yi Peng, U-Curve and U-Coefficient in Uncertain Environment, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 815–820.
  • Wei Liu, Jiuping Xu, Some Properties on Expected Value Operator for Uncertain Variables, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 808–811.
  • Xiaohu Yang, Moments and Tails Inequality within the Framework of Uncertainty Theory, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 812–814.
  • Yuan Gao, Analysis of k-out-of-n System with Uncertain Lifetimes, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 794–797.
  • Xin Gao, Shuzhen Sun, Variance Formula for Trapezoidal Uncertain Variables, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 853–855.
  • Zixiong Peng, A Sufficient and Necessary Condition of Product Uncertain Null Set, Proceedings of the Eighth International Conference on Information and Management Sciences, Kunming, China, July 20–28, 2009, pp. 798–801.