Learning to rank: Difference between revisions

From formulasearchengine
Jump to navigation Jump to search
en>Hmainsbot1
m →‎History: AWB general fixes and delink dates per WP:DATELINK, WP:YEARLINK and MOS:UNLINKYEARS using AWB (8323)
 
en>John of Reading
m →‎Practical usage by search engines: Typo fixing, replaced: since 2000s → since the 2000s using AWB
Line 1: Line 1:
There are some web sites however that do charge a charge for internet tutoring, so its truly finest to look at a few of the search results page or web sites you turn up wi ...<br><br>
{{distinguish|Uncertainty principle}}
{{multiple issues|
{{one source|date=November 2009}}
{{jargon|date=December 2009}}
{{howto|date=December 2009}}
{{citation style|date=December 2009}}
{{misleading|date=December 2009}}
}}
'''Uncertainty theory''' is a branch of [[mathematics]] based on normality, monotonicity, self-duality, countable subadditivity, and product measure axioms.{{Clarify|date=December 2009}} It was founded by Baoding Liu <ref>Baoding Liu, Uncertainty Theory, 2nd ed., Springer-Verlag, Berlin, 2007.</ref> in 2007 and refined in 2009.<ref>Baoding Liu, Uncertainty Theory, 4th ed., http://orsc.edu.cn/liu/ut.pdf.</ref>


Practically anyone actually can do online tutoring, if they have some type of my area or complimentary web site they have actually developed, some students do this simply to help out other children by on the internet tutoring. And in some circumstances there are really research web sites that are set up and specially designed for online tutoring too.<br><br>There are some website however that do ask for a charge for internet tutoring, so its truly ideal to visit a few of the search engine result or website you develop as far as on-line tutoring is concerned.<br><br>Yet another thing about on the internet tutoring, is some websites focus on a certain academic area as for internet tutoring as an example online tutoring for absolutely nothing but math or science, while various other web sites are created to offer on-line tutoring for almost any sort of subject matter.<br><br>Some online tutoring web sites are routed at youngsters, while others at senior high school students, and there are even a couple of on the internet tutoring internet site for university student also. These aren&quot;t generally complimentary internet site nonetheless, and as a matter of fact a few of the online tutoring website that are provided for all based on students have a cost as well. Learn further on [http://www.sodahead.com//user/profile/3920199/freesessionpiano870/?editMode=true SodaHead.com - User 3920199] by visiting our impressive URL. Some are not costly while others could most likely come down a little on their costs regardless they are on the internet tutoring services or website.<br><br>Online tutoring is offered nearly anywhere worldwide, as long as you have access to the Net, in some web sites the internet tutoring is more or less referred to as homework areas or labels such as this for institution aged kids, this helps them in the psychological image that they aren&quot;t actually being tutored yet are discovering about whatever project they have to find out at the exact same time.<br><br>Online tutoring that is provided to school aged children ninety percent of these internet site are free and don&quot;t price. It is usually the greater grades that have the charges for internet tutoring and the site has particular areas such as for senior high school or Pre University also, several of these internet site are discovered as you do a search on the net.<br><br>Some forms of on-line tutoring are in the methods of ready smaller sized children and this makes it easier for the online tutoring software application to keep the youngsters attention state for spelling or some subject the youngster is having difficulty in.<br><br>Older students are much better with online tutoring that they can associate with so, they don&quot;t truly need games or points of that attributes. Get more on our affiliated use with by navigating to [http://social.xfire.com/blog/onlinetutoringcut sat]. The web site is additional of an internet tutoring device that aids them exercise troubles and understand exactly how they work them out.<br><br>There are website that supply on-line tutoring for practically every subject feasible, featuring subject matters such as algebra, chemistry and various other harder subjects for high school pupils.<br><br>Lastly some of the on the internet tutoring internet site are connected with discovering facilities in your city or city, and can be incorporated into a device however in many of these situations, there is a cost, for the learning facility as well as the on the internet tutoring the youngster has access to.. I discovered [http://about.me/humanresourcesgemini Bonde Hinrichsen - The Intricacies Of Calculus | about.me] by searching books in the library.online math tutor<br>algebra tutor<br>geometry tutor<br>calculus tutor<br><br>If you loved this article and you simply would like to collect more info pertaining to [http://direfulcushion654.soup.io national Health insurance] kindly visit our web-page.
Mathematical measures of the likelihood of an event being true include [[probability theory]], capacity, [[fuzzy logic]], possibility, and credibility, as well as uncertainty.
 
==Five axioms==
'''Axiom 1.''' (Normality Axiom) <math>\mathcal{M}\{\Gamma\}=1\text{ for the universal set }\Gamma</math>.
 
'''Axiom 2.''' (Monotonicity Axiom) <math>\mathcal{M}\{\Lambda_1\}\le\mathcal{M}\{\Lambda_2\}\text{ whenever }\Lambda_1\subset\Lambda_2</math>.
 
'''Axiom 3.''' (Self-Duality Axiom) <Math>\mathcal{M}\{\Lambda\}+\mathcal{M}\{\Lambda^c\}=1\text{ for any event }\Lambda</math>.
 
'''Axiom 4.''' (Countable Subadditivity Axiom) For every countable sequence of events &Lambda;<sub>1</sub>, &Lambda;<sub>2</sub>, ..., we have
::<math>\mathcal{M}\left\{\bigcup_{i=1}^\infty\Lambda_i\right\}\le\sum_{i=1}^\infty\mathcal{M}\{\Lambda_i\}</math>.
 
'''Axiom 5.''' (Product Measure Axiom) Let <math>(\Gamma_k,\mathcal{L}_k,\mathcal{M}_k)</math> be uncertainty spaces for <math>k=1,2,\cdots,n</math>. Then the product uncertain measure <math>\mathcal{M}</math> is an uncertain measure on the product &sigma;-algebra satisfying
::<math>\mathcal{M}\left\{\prod_{i=1}^n\Lambda_i\right\}=\underset{1\le i\le n}{\operatorname{min} }\mathcal{M}_i\{\Lambda_i\}</math>.
 
'''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==
An uncertain variable is a [[measurable function]] ξ from an uncertainty space <math>(\Gamma,L,M)</math> to the [[set (mathematics)|set]] of [[real numbers]], i.e., for any [[Borel set]] '''B''' of [[real numbers]], the set
<math>\{\xi\in B\}=\{\gamma \in \Gamma|\xi(\gamma)\in B\}</math> is an event.
 
==Uncertainty distribution==
Uncertainty distribution is inducted to describe uncertain variables.
 
'''Definition''':The '''uncertainty distribution''' <math>\Phi(x):R \rightarrow [0,1]</math> of an uncertain variable ξ is defined by <math>\Phi(x)=M\{\xi\leq x\}</math>.
 
'''Theorem'''(Peng and Iwamura, ''Sufficient and Necessary Condition for Uncertainty Distribution'') A function <math>\Phi(x):R \rightarrow [0,1]</math> is an uncertain distribution if and only if it is an increasing function except <math>\Phi (x) \equiv 0</math> and <math>\Phi (x)\equiv 1</math>.
 
==Independence==
'''Definition''': The uncertain variables <math>\xi_1,\xi_2,\ldots,\xi_m</math> are said to be independent if
:<math>M\{\cap_{i=1}^m(\xi \in B_i)\}=\mbox{min}_{1\leq i \leq m}M\{\xi_i \in B_i\} </math>
for any Borel sets <math>B_1,B_2,\ldots,B_m</math> of real numbers.
 
'''Theorem 1''':  The uncertain variables <math>\xi_1,\xi_2,\ldots,\xi_m</math> are independent if
:<math>M\{\cup_{i=1}^m(\xi \in B_i)\}=\mbox{max}_{1\leq i \leq m}M\{\xi_i \in B_i\} </math>
for any Borel sets <math>B_1,B_2,\ldots,B_m</math> of real numbers.
 
'''Theorem 2''': Let <math>\xi_1,\xi_2,\ldots,\xi_m</math> be independent uncertain variables, and <math>f_1,f_2,\ldots,f_m</math> measurable functions. Then  <math>f_1(\xi_1),f_2(\xi_2),\ldots,f_m(\xi_m)</math> are independent uncertain variables.
 
'''Theorem 3''': Let <math>\Phi_i</math> be uncertainty distributions of independent uncertain variables <math>\xi_i,\quad i=1,2,\ldots,m</math> respectively, and <math>\Phi</math> the joint uncertainty distribution of uncertain vector <math>(\xi_1,\xi_2,\ldots,\xi_m)</math>. If <math>\xi_1,\xi_2,\ldots,\xi_m</math> are independent, then we have
:<math>\Phi(x_1, x_2, \ldots, x_m)=\mbox{min}_{1\leq i \leq m}\Phi_i(x_i)</math>
for any real numbers <math>x_1, x_2, \ldots, x_m</math>.
 
==Operational law==
'''Theorem''': Let <math>\xi_1,\xi_2,\ldots,\xi_m</math> be independent uncertain variables, and <math>f: R^n \rightarrow R</math> a measurable function. Then <math>\xi=f(\xi_1,\xi_2,\ldots,\xi_m)</math> is an uncertain variable such that
::<math>\mathcal{M}\{\xi\in B\}=\begin{cases} \underset{f(B_1,B_2,\cdots,B_n)\subset B}{\operatorname{sup} }\;\underset{1\le k\le n}{\operatorname{min} }\mathcal{M}_k\{\xi_k\in B_k\}, & \text{if } \underset{f(B_1,B_2,\cdots,B_n)\subset B}{\operatorname{sup} }\;\underset{1\le k\le n}{\operatorname{min} }\mathcal{M}_k\{\xi_k\in B_k\} > 0.5 \\ 1-\underset{f(B_1,B_2,\cdots,B_n)\subset B^c}{\operatorname{sup} }\;\underset{1\le k\le n}{\operatorname{min} }\mathcal{M}_k\{\xi_k\in B_k\}, & \text{if } \underset{f(B_1,B_2,\cdots,B_n)\subset B^c}{\operatorname{sup} }\;\underset{1\le k\le n}{\operatorname{min} }\mathcal{M}_k\{\xi_k\in B_k\} > 0.5 \\ 0.5, & \text{otherwise} \end{cases}</math>
where <math>B, B_1, B_2, \ldots, B_m</math> are Borel sets, and <math>f( B_1, B_2, \ldots, B_m)\subset B</math> means<math>f(x_1, x_2, \ldots, x_m) \in B</math> for any<math>x_1 \in B_1, x_2 \in B_2, \ldots,x_m \in B_m</math>.
 
==Expected Value==
'''Definition''': Let <math>\xi</math> be an uncertain variable. Then the expected value of <math>\xi</math> is defined by
:::<math>E[\xi]=\int_0^{+\infty}M\{\xi\geq r\}dr-\int_{-\infty}^0M\{\xi\leq r\}dr</math>
provided that at least one of the two integrals is finite.
 
'''Theorem 1''': Let <math>\xi</math> be an uncertain variable with uncertainty distribution <math>\Phi</math>. If the expected value exists, then
:::<math>E[\xi]=\int_0^{+\infty}(1-\Phi(x))dx-\int_{-\infty}^0\Phi(x)dx</math>.
 
[[File:Uncertain expected value.jpg|300px|center]]
 
'''Theorem 2''': Let <math>\xi</math> be an uncertain variable with regular uncertainty distribution <math>\Phi</math>. If the  expected value exists, then
:::<math>E[\xi]=\int_0^1\Phi^{-1}(\alpha)d\alpha</math>.
 
'''Theorem 3''': Let <math>\xi</math> and  <math>\eta</math> be independent uncertain variables with finite expected values. Then for any real numbers <math>a</math> and <math>b</math>, we have
:::<math>E[a\xi+b\eta]=aE[\xi]+b[\eta]</math>.
 
==Variance==
'''Definition''':  Let <math>\xi</math> be an uncertain variable with finite expected value <math>e</math>. Then the variance of <math>\xi</math> is defined by
:::<math>V[\xi]=E[(\xi-e)^2]</math>.
 
'''Theorem''': If <math>\xi</math> be an uncertain variable with finite expected value, <math>a</math> and <math>b</math> are real numbers, then
:::<math>V[a\xi+b]=a^2V[\xi]</math>.
 
==Critical value==
'''Definition''': Let <math>\xi</math> be an uncertain variable, and <math>\alpha\in(0,1]</math>. Then
:<math>\xi_{sup}(\alpha)=\mbox{sup}\{r|M\{\xi\geq r\}\geq\alpha\}</math>
is called the α-[[optimistic]] value to <math>\xi</math>, and
:<math>\xi_{inf}(\alpha)=\mbox{inf}\{r|M\{\xi\leq r\}\geq\alpha\}</math>
is called the α-[[pessimistic]] value to <math>\xi</math>.
 
'''Theorem 1''': Let <math>\xi</math> be an uncertain variable with regular uncertainty distribution <math>\Phi</math>. Then its α-[[optimistic]] value and α-[[pessimistic]] value are
::<math>\xi_{sup}(\alpha)=\Phi^{-1}(1-\alpha)</math>,
::<math>\xi_{inf}(\alpha)=\Phi^{-1}(\alpha)</math>.
 
'''Theorem 2''': Let <math>\xi</math> be an uncertain variable, and <math>\alpha\in(0,1]</math>.  Then we have
* if <math>\alpha>0.5</math>, then <math>\xi_{inf}(\alpha)\geq \xi_{sup}(\alpha)</math>;
* if <math>\alpha\leq 0.5</math>, then <math>\xi_{inf}(\alpha)\leq \xi_{sup}(\alpha)</math>.
 
'''Theorem 3''': Suppose that <math>\xi</math> and <math>\eta</math> are independent uncertain variables, and <math>\alpha\in(0,1]</math>. Then we have
 
<math>(\xi + \eta)_{sup}(\alpha)=\xi_{sup}(\alpha)+\eta_{sup}{\alpha}</math>,
 
<math>(\xi + \eta)_{inf}(\alpha)=\xi_{inf}(\alpha)+\eta_{inf}{\alpha}</math>,
 
<math>(\xi \vee \eta)_{sup}(\alpha)=\xi_{sup}(\alpha)\vee\eta_{sup}{\alpha}</math>,
 
<math>(\xi \vee \eta)_{inf}(\alpha)=\xi_{inf}(\alpha)\vee\eta_{inf}{\alpha}</math>,
 
<math>(\xi \wedge \eta)_{sup}(\alpha)=\xi_{sup}(\alpha)\wedge\eta_{sup}{\alpha}</math>,
 
<math>(\xi \wedge \eta)_{inf}(\alpha)=\xi_{inf}(\alpha)\wedge\eta_{inf}{\alpha}</math>.
 
==Entropy==
'''Definition''': Let <math>\xi</math> be an uncertain variable with uncertainty distribution <math>\Phi</math>.  Then its entropy is defined by
::<math>H[\xi]=\int_{-\infty}^{+\infty}S(\Phi(x))dx</math>
where <math>S(x)=-t\mbox{ln}(t)-(1-t)\mbox{ln}(1-t)</math>.
 
'''Theorem 1'''(''Dai and Chen''): Let <math>\xi</math> be an uncertain variable with regular uncertainty distribution <math>\Phi</math>. Then
::<math>H[\xi]=\int_0^1\Phi^{-1}(\alpha)\mbox{ln}\frac{\alpha}{1-\alpha}d\alpha</math>.
 
'''Theorem 2''': Let <math>\xi</math> and <math>\eta</math> be independent uncertain variables. Then for any real numbers <math>a</math> and <math>b</math>, we have
::<math>H[a\xi+b\eta]=|a|E[\xi]+|b|E[\eta]</math>.
 
'''Theorem 3''': Let <math>\xi</math> be an uncertain variable whose uncertainty distribution is arbitrary but the expected value <math>e</math> and variance <math>\sigma^2</math>. Then
::<math>H[\xi]\leq\frac{\pi\sigma}{\sqrt{3}}</math>.
 
==Inequalities==
'''Theorem 1'''(''Liu'', Markov Inequality): Let <math>\xi</math> be an uncertain variable. Then for any given numbers <math>t > 0</math> and <math>p > 0</math>, we have
::<math>M\{|\xi|\geq t\}\leq \frac{E[|\xi|^p]}{t^p}</math>.
 
'''Theorem 2''' (''Liu'', Chebyshev Inequality) Let <math>\xi</math> be an uncertain variable whose variance <math>V[\xi]</math> exists. Then for any given number<math> t > 0</math>, we have
::<math>M\{|\xi-E[\xi]|\geq t\}\leq \frac{V[\xi]}{t^2}</math>.
 
'''Theorem 3''' (''Liu'', Holder’s Inequality) Let <math>p</math> and <math>q</math> be positive numbers with <math>1/p + 1/q = 1</math>, and let <math>\xi</math> and <math>\eta</math> be independent uncertain variables with <math>E[|\xi|^p]< \infty</math>  and <math>E[|\eta|^q] < \infty</math>. Then we have
::<math>E[|\xi\eta|]\leq \sqrt[p]{E[|\xi|^p]} \sqrt[p]{E[\eta|^p]}</math>.
 
'''Theorem 4''':(Liu [127], Minkowski Inequality) Let <math>p</math> be a real number with <math>p\leq 1</math>, and let <math>\xi</math> and <math>\eta</math> be independent uncertain variables with <math>E[|\xi|^p]< \infty</math>  and <math>E[|\eta|^q] < \infty</math>. Then we have
::<math>\sqrt[p]{E[|\xi+\eta|^p]}\leq \sqrt[p]{E[|\xi|^p]}+\sqrt[p]{E[\eta|^p]}</math>.
 
==Convergence concept==
'''Definition 1''': Suppose that <math>\xi,\xi_1,\xi_2,\ldots</math> are uncertain variables defined on the uncertainty space <math>(\Gamma,L,M)</math>. The sequence <math>\{\xi_i\}</math> is said to be convergent a.s. to <math>\xi</math> if there exists an event <math>\Lambda</math> with <math>M\{\Lambda\} = 1</math> such that
::<math>\mbox{lim}_{i\rightarrow\infty}|\xi_i(\gamma)-\xi(\gamma)|=0</math>
for every <math>\gamma\in\Lambda</math>. In that case we write <math>\xi_i\rightarrow \xi</math>,a.s.
 
'''Definition 2''': Suppose that <math>\xi,\xi_1,\xi_2,\ldots</math> are uncertain variables. We say that the sequence <math>\{\xi_i\}</math> converges in measure to <math>\xi</math> if
::<math>\mbox{lim}_{i\rightarrow\infty}M\{|\xi_i-\xi|\leq \varepsilon \}=0</math>
for every <math>\varepsilon>0</math>.
 
'''Definition 3''': Suppose that <math>\xi,\xi_1,\xi_2,\ldots</math> are uncertain variables with finite expected values. We say that the sequence <math>\{\xi_i\}</math> converges in mean to <math>\xi</math> if
::<math>\mbox{lim}_{i\rightarrow\infty}E[|\xi_i-\xi|]=0</math>.
 
'''Definition 4''': Suppose that  <math>\Phi,\phi_1,\Phi_2,\ldots</math> are uncertainty distributions of uncertain variables <math>\xi,\xi_1,\xi_2,\ldots</math>, respectively. We say that the sequence <math>\{\xi_i\}</math> converges in distribution to <math>\xi</math> if <math>\Phi_i\rightarrow\Phi</math> at any continuity point of <math>\Phi</math>.
 
'''Theorem 1''': Convergence in Mean <math>\Rightarrow</math> Convergence in Measure <math>\Rightarrow</math> Convergence in Distribution.
However, Convergence in Mean <math>\nLeftrightarrow</math> Convergence Almost Surely <math>\nLeftrightarrow</math> Convergence in Distribution.
 
==Conditional uncertainty==
'''Definition 1''': Let <math>(\Gamma,L,M)</math> be an uncertainty space, and <math>A,B\in L</math>. Then the conditional uncertain measure of A given B is defined by
 
::<math>\mathcal{M}\{A\vert B\}=\begin{cases} \displaystyle\frac{\mathcal{M}\{A\cap B\} }{\mathcal{M}\{B\} }, &\displaystyle\text{if }\frac{\mathcal{M}\{A\cap B\} }{\mathcal{M}\{B\} }<0.5 \\ \displaystyle 1 - \frac{\mathcal{M}\{A^c\cap B\} }{\mathcal{M}\{B\} }, &\displaystyle\text{if } \frac{\mathcal{M}\{A^c\cap B\} }{\mathcal{M}\{B\} }<0.5 \\ 0.5, & \text{otherwise} \end{cases}</math>
::<math>\text{provided that } \mathcal{M}\{B\}>0</math>
 
'''Theorem 1''': Let <math>(\Gamma,L,M)</math> be an uncertainty space, and B an event with <math>M\{B\} > 0</math>. Then M{·|B} defined by Definition 1 is an uncertain measure, and <math>(\Gamma,L,M\{\mbox{·}|B\})</math>is an uncertainty space.
 
'''Definition 2''': Let <math>\xi</math> be an uncertain variable on <math>(\Gamma,L,M)</math>. A conditional uncertain variable of <math>\xi</math> given B is a measurable function <math>\xi|_B</math> from the conditional uncertainty space <math>(\Gamma,L,M\{\mbox{·}|_B\})</math> to the set of real numbers such that
::<math>\xi|_B(\gamma)=\xi(\gamma),\forall \gamma \in \Gamma</math>.
 
'''Definition 3''': The conditional uncertainty distribution <math>\Phi\rightarrow[0, 1]</math> of an uncertain variable <math>\xi</math> given B is defined by
::<math>\Phi(x|B)=M\{\xi\leq x|B\}</math>
provided that <math>M\{B\}>0</math>.
 
'''Theorem 2''': Let <math>\xi</math> be an uncertain variable with regular uncertainty distribution <math>\Phi(x)</math>, and <math>t</math> a real number with <math>\Phi(t) < 1</math>. Then the conditional uncertainty distribution of <math>\xi</math> given <math>\xi> t</math> is
::<math>\Phi(x\vert(t,+\infty))=\begin{cases} 0, & \text{if }\Phi(x)\le\Phi(t)\\ \displaystyle\frac{\Phi(x)}{1-\Phi(t)}\and 0.5, & \text{if }\Phi(t)<\Phi(x)\le(1+\Phi(t))/2 \\ \displaystyle\frac{\Phi(x)-\Phi(t)}{1-\Phi(t)}, & \text{if }(1+\Phi(t))/2\le\Phi(x) \end{cases}</math>
 
'''Theorem 3''': Let <math>\xi</math> be an uncertain variable with regular uncertainty distribution <math>\Phi(x)</math>, and <math>t</math> a real number with <math>\Phi(t)>0</math>. Then the conditional uncertainty distribution of <math>\xi</math> given <math>\xi\leq t</math> is
::<math>\Phi(x\vert(-\infty,t])=\begin{cases} \displaystyle\frac{\Phi(x)}{\Phi(t)}, & \text{if }\Phi(x)\le\Phi(t)/2 \\ \displaystyle\frac{\Phi(x)+\Phi(t)-1}{\Phi(t)}\or 0.5, & \text{if }\Phi(t)/2\le\Phi(x)<\Phi(t) \\ 1, & \text{if }\Phi(t)\le\Phi(x) \end{cases}</math>
 
'''Definition 4''': Let <math>\xi</math> be an uncertain variable. Then the conditional expected value of <math>\xi</math> given B is defined by
::<math>E[\xi|B]=\int_0^{+\infty}M\{\xi\geq r|B\}dr-\int_{-\infty}^0M\{\xi\leq r|B\}dr</math>
provided that at least one of the two integrals is finite.
 
==References==
{{reflist}}
 
* 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.&nbsp;23–26.
* 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.&nbsp;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.&nbsp;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.&nbsp;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.&nbsp;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.&nbsp;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.&nbsp;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.&nbsp;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.&nbsp;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.&nbsp;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.&nbsp;798–801.
 
{{DEFAULTSORT:Uncertainty Theory}}
[[Category:Probability theory]]
[[Category:Fuzzy logic]]

Revision as of 11:16, 1 February 2014

Template:Distinguish Template:Multiple issues Uncertainty theory is a branch of mathematics based on normality, monotonicity, self-duality, countable subadditivity, and product measure axioms.Template:Clarify It was founded by Baoding Liu [1] in 2007 and refined in 2009.[2]

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

Five axioms

Axiom 1. (Normality Axiom) .

Axiom 2. (Monotonicity Axiom) .

Axiom 3. (Self-Duality Axiom) .

Axiom 4. (Countable Subadditivity Axiom) For every countable sequence of events Λ1, Λ2, ..., we have

.

Axiom 5. (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

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

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

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

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

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

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

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

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

,

,

,

,

,

.

Entropy

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

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

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

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

43 year old Petroleum Engineer Harry from Deep River, usually spends time with hobbies and interests like renting movies, property developers in singapore new condominium and vehicle racing. Constantly enjoys going to destinations like Camino Real de Tierra Adentro.

  • 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, 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.
  1. Baoding Liu, Uncertainty Theory, 2nd ed., Springer-Verlag, Berlin, 2007.
  2. Baoding Liu, Uncertainty Theory, 4th ed., http://orsc.edu.cn/liu/ut.pdf.