Gaussian distributions in Banach spaces #
We introduce a predicate IsGaussian for measures on a Banach space E such that the map by
any continuous linear form is a Gaussian measure on ℝ.
For Gaussian distributions in ℝ, see the file Mathlib.Probability.Distributions.Gaussian.Real.
Main definitions #
IsGaussian: a measureμis Gaussian if its map by every continuous linear formL : Dual ℝ Eis a real Gaussian measure. That is,μ.map L = gaussianReal (μ[L]) (Var[L; μ]).toNNReal.
Main statements #
isGaussian_iff_charFunDual_eq: a finite measureμis Gaussian if and only if its characteristic function has valueexp (μ[L] * I - Var[L; μ] / 2)for every continuous linear formL : Dual ℝ E.
References #
- [Martin Hairer, An introduction to stochastic PDEs][hairer2009introduction]
A measure is Gaussian if its map by every continuous linear form is a real Gaussian measure.
Instances
A real Gaussian measure is Gaussian.
Dirac measures are Gaussian.
A Gaussian measure is a probability measure.
The map of a Gaussian measure by a continuous linear map is Gaussian.
The characteristic function of a Gaussian measure μ has value
exp (μ[L] * I - Var[L; μ] / 2) at L : Dual ℝ E.
A finite measure is Gaussian iff its characteristic function has value
exp (μ[L] * I - Var[L; μ] / 2) for every L : Dual ℝ E.
Alias of the reverse direction of ProbabilityTheory.isGaussian_iff_charFunDual_eq.
A finite measure is Gaussian iff its characteristic function has value
exp (μ[L] * I - Var[L; μ] / 2) for every L : Dual ℝ E.