Regular conditional probability

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Regular conditional probability is a concept that has developed to overcome certain difficulties in formally defining conditional probabilities for continuous probability distributions. It is defined as an alternative probability measure conditioned on a particular value of a random variable.

Motivation

Normally we define the conditional probability of an event A given an event B as:

 

The difficulty with this arises when the event B is too small to have a non-zero probability. For example, suppose we have a random variable X with a uniform distribution on   and B is the event that   Clearly the probability of B in this case is   but nonetheless we would still like to assign meaning to a conditional probability such as   To do so rigorously requires the definition of a regular conditional probability.

Definition

Let   be a probability space, and let   be a random variable, defined as a Borel-measurable function from   to its state space   Then a regular conditional probability is defined as a function   called a "transition probability", where   is a valid probability measure (in its second argument) on   for all   and a measurable function in E (in its first argument) for all   such that for all   and all  [1]

 

To express this in our more familiar notation:

 

where   i.e. the topological support of the pushforward measure   As can be seen from the integral above, the value of   for points x outside the support of the random variable is meaningless; its significance as a conditional probability is strictly limited to the support of T.

The measurable space   is said to have the regular conditional probability property if for all probability measures   on   all random variables on   admit a regular conditional probability. A Radon space, in particular, has this property.

See also conditional probability and conditional probability distribution.

Alternate definition

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.

Example

To continue with our motivating example above, we consider a real-valued random variable X and write

 

(where   for the example given.) This limit, if it exists, is a regular conditional probability for X, restricted to  

In any case, it is easy to see that this limit fails to exist for   outside the support of X: since the support of a random variable is defined as the set of all points in its state space whose every neighborhood has positive probability, for every point   outside the support of X (by definition) there will be an   such that  

Thus if X is distributed uniformly on   it is truly meaningless to condition a probability on " ".

See also

References

  1. ^ 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