English

Stein's method, smoothing and functional approximation

Probability 2024-02-15 v4 Statistics Theory Statistics Theory

Abstract

Stein's method for Gaussian process approximation can be used to bound the differences between the expectations of smooth functionals hh of a c\`adl\`ag random process XX of interest and the expectations of the same functionals of a well understood target random process ZZ with continuous paths. Unfortunately, the class of smooth functionals for which this is easily possible is very restricted. Here, we prove an infinite dimensional Gaussian smoothing inequality, which enables the class of functionals to be greatly expanded -- examples are Lipschitz functionals with respect to the uniform metric, and indicators of arbitrary events -- in exchange for a loss of precision in the bounds. Our inequalities are expressed in terms of the smooth test function bound, an expectation of a functional of XX that is closely related to classical tightness criteria, a similar expectation for ZZ, and, for the indicator of a set KK, the probability P(ZKθKθ)\mathbb{P}(Z \in K^\theta \setminus K^{-\theta}) that the target process is close to the boundary of KK.

Keywords

Cite

@article{arxiv.2106.01564,
  title  = {Stein's method, smoothing and functional approximation},
  author = {A. D. Barbour and Nathan Ross and Guangqu Zheng},
  journal= {arXiv preprint arXiv:2106.01564},
  year   = {2024}
}

Comments

Ver 4: 33 pages, added Example 1.10, improved some details and discussion, and streamlined some notation; Ver3: 28 pages, corrected a mistake in Lemma 1.10 and added discussion and details, only superficial changes to the main result; Ver2: 21 pages, additional discussion and details; Ver1: 17 pages