Gaussian probability space

In probability theory particularly in the Malliavin calculus, a Gaussian probability space is a probability space together with a Hilbert space of mean zero, real-valued Gaussian random variables. Important examples include the classical or abstract Wiener space with some suitable collection of Gaussian random variables.[1][2]

Definition

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A Gaussian probability space   consists of

  • a (complete) probability space  ,
  • a closed linear subspace   called the Gaussian space such that all   are mean zero Gaussian variables. Their σ-algebra is denoted as  .
  • a σ-algebra   called the transverse σ-algebra which is defined through
 [3]

Irreducibility

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A Gaussian probability space is called irreducible if  . Such spaces are denoted as  . Non-irreducible spaces are used to work on subspaces or to extend a given probability space.[3] Irreducible Gaussian probability spaces are classified by the dimension of the Gaussian space  .[4]

Subspaces

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A subspace   of a Gaussian probability space   consists of

  • a closed subspace  ,
  • a sub σ-algebra   of transverse random variables such that   and   are independent,   and  .[3]

Example:

Let   be a Gaussian probability space with a closed subspace  . Let   be the orthogonal complement of   in  . Since orthogonality implies independence between   and  , we have that   is independent of  . Define   via  .

Remark

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For   we have  .

Fundamental algebra

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Given a Gaussian probability space   one defines the algebra of cylindrical random variables

 

where   is a polynomial in   and calls   the fundamental algebra. For any   it is true that  .

For an irreducible Gaussian probability   the fundamental algebra   is a dense set in   for all  .[4]

Numerical and Segal model

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An irreducible Gaussian probability   where a basis was chosen for   is called a numerical model. Two numerical models are isomorphic if their Gaussian spaces have the same dimension.[4]

Given a separable Hilbert space  , there exists always a canoncial irreducible Gaussian probability space   called the Segal model (named after Irving Segal) with   as a Gaussian space. In this setting, one usually writes for an element   the associated Gaussian random variable in the Segal model as  . The notation is that of an isornomal Gaussian process and typically the Gaussian space is defined through one. One can then easily choose an arbitrary Hilbert space   and have the Gaussian space as  .[5]

Literature

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  • Malliavin, Paul (1997). Stochastic analysis. Berlin, Heidelberg: Springer. doi:10.1007/978-3-642-15074-6. ISBN 3-540-57024-1.

References

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  1. ^ Malliavin, Paul (1997). Stochastic analysis. Berlin, Heidelberg: Springer. doi:10.1007/978-3-642-15074-6. ISBN 3-540-57024-1.
  2. ^ Nualart, David (2013). The Malliavin calculus and related topics. New York: Springer. p. 3. doi:10.1007/978-1-4757-2437-0.
  3. ^ a b c Malliavin, Paul (1997). Stochastic analysis. Berlin, Heidelberg: Springer. pp. 4–5. doi:10.1007/978-3-642-15074-6. ISBN 3-540-57024-1.
  4. ^ a b c Malliavin, Paul (1997). Stochastic analysis. Berlin, Heidelberg: Springer. pp. 13–14. doi:10.1007/978-3-642-15074-6. ISBN 3-540-57024-1.
  5. ^ Malliavin, Paul (1997). Stochastic analysis. Berlin, Heidelberg: Springer. p. 16. doi:10.1007/978-3-642-15074-6. ISBN 3-540-57024-1.