fbpx
Wikipedia

Regular conditional probability

In probability theory, regular conditional probability is a concept that formalizes the notion of conditioning on the outcome of a random variable. The resulting conditional probability distribution is a parametrized family of probability measures called a Markov kernel.

Definition edit

Conditional probability distribution edit

Consider two random variables  . The conditional probability distribution of Y given X is a two variable function  

If the random variable X is discrete

 

If the random variables X, Y are continuous with density  .

 

A more general definition can be given in terms of conditional expectation. Consider a function   satisfying

 

for almost all  . Then the conditional probability distribution is given by

 

As with conditional expectation, this can be further generalized to conditioning on a sigma algebra  . In that case the conditional distribution is a function  :

 

Regularity edit

For working with  , it is important that it be regular, that is:

  1. For almost all x,   is a probability measure
  2. For all A,   is a measurable function

In other words   is a Markov kernel.

The second condition holds trivially, but the proof of the first is more involved. It can be shown that if Y is a random element   in a Radon space S, there exists a   that satisfies the first condition.[1] It is possible to construct more general spaces where a regular conditional probability distribution does not exist.[2]

Relation to conditional expectation edit

For discrete and continuous random variables, the conditional expectation can be expressed as

 

where   is the conditional density of Y given X.

This result can be extended to measure theoretical conditional expectation using the regular conditional probability distribution:

 

Formal definition edit

Let   be a probability space, and let   be a random variable, defined as a Borel-measurable function from   to its state space  . One should think of   as a way to "disintegrate" the sample space   into  . Using the disintegration theorem from the measure theory, it allows us to "disintegrate" the measure   into a collection of measures, one for each  . Formally, a regular conditional probability is defined as a function   called a "transition probability", where:

  • For every  ,   is a probability measure on  . Thus we provide one measure for each  .
  • For all  ,   (a mapping  ) is  -measurable, and
  • For all   and all  [3]
 

where   is the pushforward measure   of the distribution of the random element  ,   i.e. the support of the  . Specifically, if we take  , then  , and so

 

where   can be denoted, using more familiar terms  .

Alternate definition edit

Consider a Radon space   (that is a probability measure defined on a Radon space endowed with the Borel sigma-algebra) and a real-valued random variable T. As discussed above, in this case there exists a regular conditional probability with respect to T. Moreover, we can alternatively define the regular conditional probability for an event A given a particular value t of the random variable T in the following manner:

 

where the limit is taken over the net of open neighborhoods U of t as they become smaller with respect to set inclusion. This limit is defined if and only if the probability space is Radon, and only in the support of T, as described in the article. This is the restriction of the transition probability to the support of T. To describe this limiting process rigorously:

For every   there exists an open neighborhood U of the event {T = t}, such that for every open V with  

 

where   is the limit.

See also edit

References edit

  1. ^ Klenke, Achim. Probability theory : a comprehensive course (Second ed.). London. ISBN 978-1-4471-5361-0.
  2. ^ Faden, A.M., 1985. The existence of regular conditional probabilities: necessary and sufficient conditions. The Annals of Probability, 13(1), pp. 288–298.
  3. ^ D. Leao Jr. et al. Regular conditional probability, disintegration of probability and Radon spaces. Proyecciones. Vol. 23, No. 1, pp. 15–29, May 2004, Universidad Católica del Norte, Antofagasta, Chile PDF

External links edit

  • Regular Conditional Probability on PlanetMath

regular, conditional, probability, probability, theory, regular, conditional, probability, concept, that, formalizes, notion, conditioning, outcome, random, variable, resulting, conditional, probability, distribution, parametrized, family, probability, measure. In probability theory regular conditional probability is a concept that formalizes the notion of conditioning on the outcome of a random variable The resulting conditional probability distribution is a parametrized family of probability measures called a Markov kernel Contents 1 Definition 1 1 Conditional probability distribution 1 2 Regularity 1 3 Relation to conditional expectation 2 Formal definition 3 Alternate definition 4 See also 5 References 6 External linksDefinition editConditional probability distribution edit Consider two random variables X Y W R displaystyle X Y Omega to mathbb R nbsp The conditional probability distribution of Y given X is a two variable function k Y X R B R 0 1 displaystyle kappa Y mid X mathbb R times mathcal B mathbb R to 0 1 nbsp If the random variable X is discrete k Y X x A P Y A X x P Y A X x P X x if P X x gt 0 arbitrary value otherwise displaystyle kappa Y mid X x A P Y in A mid X x begin cases frac P Y in A X x P X x amp text if P X x gt 0 3pt text arbitrary value amp text otherwise end cases nbsp If the random variables X Y are continuous with density f X Y x y displaystyle f X Y x y nbsp k Y X x A A f X Y x y d y R f X Y x y d y if R f X Y x y d y gt 0 arbitrary value otherwise displaystyle kappa Y mid X x A begin cases frac int A f X Y x y mathrm d y int mathbb R f X Y x y mathrm d y amp text if int mathbb R f X Y x y mathrm d y gt 0 3pt text arbitrary value amp text otherwise end cases nbsp A more general definition can be given in terms of conditional expectation Consider a function e Y A R 0 1 displaystyle e Y in A mathbb R to 0 1 nbsp satisfying e Y A X w E 1 Y A X w displaystyle e Y in A X omega operatorname E 1 Y in A mid X omega nbsp for almost all w displaystyle omega nbsp Then the conditional probability distribution is given by k Y X x A e Y A x displaystyle kappa Y mid X x A e Y in A x nbsp As with conditional expectation this can be further generalized to conditioning on a sigma algebra F displaystyle mathcal F nbsp In that case the conditional distribution is a function W B R 0 1 displaystyle Omega times mathcal B mathbb R to 0 1 nbsp k Y F w A E 1 Y A F displaystyle kappa Y mid mathcal F omega A operatorname E 1 Y in A mid mathcal F nbsp Regularity edit For working with k Y X displaystyle kappa Y mid X nbsp it is important that it be regular that is For almost all x A k Y X x A displaystyle A mapsto kappa Y mid X x A nbsp is a probability measure For all A x k Y X x A displaystyle x mapsto kappa Y mid X x A nbsp is a measurable function In other words k Y X displaystyle kappa Y mid X nbsp is a Markov kernel The second condition holds trivially but the proof of the first is more involved It can be shown that if Y is a random element W S displaystyle Omega to S nbsp in a Radon space S there exists a k Y X displaystyle kappa Y mid X nbsp that satisfies the first condition 1 It is possible to construct more general spaces where a regular conditional probability distribution does not exist 2 Relation to conditional expectation edit For discrete and continuous random variables the conditional expectation can be expressed as E Y X x y y P Y y X x E Y X x y f Y X x y d y displaystyle begin aligned operatorname E Y mid X x amp sum y y P Y y mid X x operatorname E Y mid X x amp int y f Y mid X x y mathrm d y end aligned nbsp where f Y X x y displaystyle f Y mid X x y nbsp is the conditional density of Y given X This result can be extended to measure theoretical conditional expectation using the regular conditional probability distribution E Y X w y k Y s X w d y displaystyle operatorname E Y mid X omega int y kappa Y mid sigma X omega mathrm d y nbsp Formal definition editLet W F P displaystyle Omega mathcal F P nbsp be a probability space and let T W E displaystyle T Omega rightarrow E nbsp be a random variable defined as a Borel measurable function from W displaystyle Omega nbsp to its state space E E displaystyle E mathcal E nbsp One should think of T displaystyle T nbsp as a way to disintegrate the sample space W displaystyle Omega nbsp into T 1 x x E displaystyle T 1 x x in E nbsp Using the disintegration theorem from the measure theory it allows us to disintegrate the measure P displaystyle P nbsp into a collection of measures one for each x E displaystyle x in E nbsp Formally a regular conditional probability is defined as a function n E F 0 1 displaystyle nu E times mathcal F rightarrow 0 1 nbsp called a transition probability where For every x E displaystyle x in E nbsp n x displaystyle nu x cdot nbsp is a probability measure on F displaystyle mathcal F nbsp Thus we provide one measure for each x E displaystyle x in E nbsp For all A F displaystyle A in mathcal F nbsp n A displaystyle nu cdot A nbsp a mapping E 0 1 displaystyle E to 0 1 nbsp is E displaystyle mathcal E nbsp measurable and For all A F displaystyle A in mathcal F nbsp and all B E displaystyle B in mathcal E nbsp 3 P A T 1 B B n x A P T 1 d x displaystyle P big A cap T 1 B big int B nu x A P circ T 1 mathrm d x nbsp dd where P T 1 displaystyle P circ T 1 nbsp is the pushforward measure T P displaystyle T P nbsp of the distribution of the random element T displaystyle T nbsp x supp T displaystyle x in operatorname supp T nbsp i e the support of the T P displaystyle T P nbsp Specifically if we take B E displaystyle B E nbsp then A T 1 E A displaystyle A cap T 1 E A nbsp and so P A E n x A P T 1 d x displaystyle P A int E nu x A P circ T 1 mathrm d x nbsp where n x A displaystyle nu x A nbsp can be denoted using more familiar terms P A T x displaystyle P A T x nbsp Alternate definition editThe factual accuracy of part of this article is disputed The dispute is about this way leads to irregular conditional probability Please help to ensure that disputed statements are reliably sourced See the relevant discussion on the talk page September 2009 Learn how and when to remove this message Consider a Radon space W displaystyle Omega nbsp that is a probability measure defined on a Radon space endowed with the Borel sigma algebra and a real valued random variable T As discussed above in this case there exists a regular conditional probability with respect to T Moreover we can alternatively define the regular conditional probability for an event A given a particular value t of the random variable T in the following manner P A T t lim U T t P A U P U displaystyle P A mid T t lim U supset T t frac P A cap U P U nbsp where the limit is taken over the net of open neighborhoods U of t as they become smaller with respect to set inclusion This limit is defined if and only if the probability space is Radon and only in the support of T as described in the article This is the restriction of the transition probability to the support of T To describe this limiting process rigorously For every e gt 0 displaystyle varepsilon gt 0 nbsp there exists an open neighborhood U of the event T t such that for every open V with T t V U displaystyle T t subset V subset U nbsp P A V P V L lt e displaystyle left frac P A cap V P V L right lt varepsilon nbsp where L P A T t displaystyle L P A mid T t nbsp is the limit See also editConditioning probability Disintegration theorem Adherent point Limit pointReferences edit Klenke Achim Probability theory a comprehensive course Second ed London ISBN 978 1 4471 5361 0 Faden A M 1985 The existence of regular conditional probabilities necessary and sufficient conditions The Annals of Probability 13 1 pp 288 298 D Leao Jr et al Regular conditional probability disintegration of probability and Radon spaces Proyecciones Vol 23 No 1 pp 15 29 May 2004 Universidad Catolica del Norte Antofagasta Chile PDFExternal links editRegular Conditional Probability on PlanetMath Retrieved from https en wikipedia org w index php title Regular conditional probability amp oldid 1188646261, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.