Ionescu-Tulcea theorem

From testwiki
Jump to navigation Jump to search

Template:Short description Template:Dablink

In the mathematical theory of probability, the Ionescu-Tulcea theorem, sometimes called the Ionesco Tulcea extension theorem, deals with the existence of probability measures for probabilistic events consisting of a countably infinite number of individual probabilistic events. In particular, the individual events may be independent or dependent with respect to each other. Thus, the statement goes beyond the mere existence of countable product measures. The theorem was proved by Cassius Ionescu-Tulcea in 1949.[1][2]

Statement of the theorem

Suppose that (Ω0,π’œ0,P0) is a probability space and (Ωi,π’œi) for iβ„• is a sequence of measurable spaces. For each iβ„• let

κi:(Ωi1,π’œi1)(Ωi,π’œi)

be the Markov kernel derived from (Ωi1,π’œi1) and (Ωi,π’œi),, where

Ωi:=k=0iΩk and π’œi:=k=0iπ’œk.

Then there exists a sequence of probability measures

Pi:=P0k=1iκk defined on the product space for the sequence (Ωi,π’œi), iβ„•,

and there exists a uniquely defined probability measure P on (k=0Ωk,k=0π’œk), so that

Pi(A)=P(A×k=i+1Ωk)

is satisfied for each Aπ’œi and iβ„•. (The measure P has conditional probabilities equal to the stochastic kernels.)[3]

Applications

The construction used in the proof of the Ionescu-Tulcea theorem is often used in the theory of Markov decision processes, and, in particular, the theory of Markov chains.[3]

See also

Sources

References