Gaussian measure

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In mathematics, Gaussian measure is a Borel measure on finite-dimensional Euclidean space \mathbb{R}^{n}, closely related to the normal distribution in statistics. There is also a generalization to infinite-dimensional spaces. Gaussian measures are named after the German mathematician Carl Friedrich Gauss.

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[edit] Definitions

Let n \in \mathbb{N} and let \lambda^{n} : \mathrm{Borel} (\mathbb{R}^{n})_{0} \to [0, + \infty] denote Lebesgue measure. (Technical point: the subscript "0" indicates that Lebesgue measure is defined on the completion of the Borel sigma algebra.) Then the standard Gaussian measure \gamma^{n} : \mathrm{Borel} (\mathbb{R}^{n})_{0} \to [0, + \infty] is defined by

\gamma^{n} (A) := \frac{1}{\sqrt{2 \pi}^{n}} \int_{A} \exp \left( - \frac{1}{2} \| x \|_{\mathbb{R}^{n}}^{2} \right) \, \mathrm{d} \lambda^{n} (x).

In terms of the Radon-Nikodym derivative,

\frac{\mathrm{d} \gamma^{n}}{\mathrm{d} \lambda^{n}} (x) = \exp \left( - \frac{1}{2} \| x \|_{\mathbb{R}^{n}}^{2} \right).

More generally, the Gaussian measure with mean \mu \in \mathbb{R}^{n} and variance σ2 > 0 is given by

\gamma_{\mu, \sigma^{2}}^{n} (A) := \frac{1}{\sqrt{2 \pi \sigma^{2}}^{n}} \int_{A} \exp \left( - \frac{1}{2 \sigma^{2}} \| x - \mu \|_{\mathbb{R}^{n}}^{2} \right) \, \mathrm{d} \lambda^{n} (x).

Gaussian measures with mean μ = 0 are known as centred Gaussian measures.

The Dirac measure δμ is the weak limit of \gamma_{\mu, \sigma^{2}}^{n} as \sigma \to 0, and is considered to be a degenerate Gaussian measure; in contrast, Gaussian measures with finite non-zero variance are called non-degenerate Gaussian measures.

[edit] Properties of Gaussian measure

The standard Gaussian measure γn on \mathbb{R}^{n}

\gamma^{n} (B) = \sup \{ \gamma^{n} (K) | K \subseteq B \mathrm{\,is\,compact} \},

so Gaussian measure is a Radon measure;

\frac{\mathrm{d} (T_{h})_{*} (\gamma^{n})}{\mathrm{d} \gamma^{n}} (x) = \exp \left( \langle h, x \rangle_{\mathbb{R}^{n}} - \frac{1}{2} \| h \|_{\mathbb{R}^{2}}^{2} \right),

where the derivative on the left-hand side is the Radon-Nikodym derivative, and (Th) *n) is the push forward of standard Gaussian measure by the translation map T_{h} : x \mapsto x + h;

Z \sim \mathrm{Normal} (\mu, \sigma^{2}) \implies \mathbb{P} (Z \in A) = \gamma_{\mu, \sigma^{2}}^{n} (A).

[edit] Gaussian measures on infinte-dimensional spaces

It can be shown that there is no analogue of Lebesgue measure on an infinite-dimensional vector space. Even so, it is possible the define Gaussian measures on infinte-dimensional spaces, the main example being the abstract Wiener space construction. A Borel measure μ on a separable Banach space E is said to be a non-degenerate Gaussian measure if, for every linear functional \ell \in E^{*} except \ell = 0, the push forward measure \ell_{*} (\mu) is a non-degenerate Gaussian measure on \mathbb{R} in the sense defined above.

For example, classical Wiener measure on the space of continuous paths is a Gaussian measure.

[edit] See also