Asymptotic Expansion of Gaussian Chaos via Probabilistic Approach
classification
🧮 math.PR
keywords
gaussianasymptoticchaosfunctionprobabilisticrandomtailapproach
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For a centered $d$-dimensional Gaussian random vector $\xi =(\xi_1,\ldots,\xi_d)$ and a homogeneous function $h:R^d\to R$ we derive asymptotic expansions for the tail of the Gaussian chaos $h(\xi)$ given the function $h$ is sufficiently smooth. Three challenging instances of the Gaussian chaos are the determinant of a Gaussian matrix, the Gaussian orthogonal ensemble and the diameter of random Gaussian clouds. Using a direct probabilistic asymptotic method, we investigate both the asymptotic behaviour of the tail distribution of $h(\xi)$ and its density at infinity and then discuss possible extensions for some general $\xi$ with polar representation.
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