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Functional approximations with Stein's method of exchangeable pairs
We combine the method of exchangeable pairs with Stein's method for
functional approximation. As a result, we give a general linearity condition
under which an abstract Gaussian approximation theorem for stochastic processes
holds. We apply this approach to estimate the distance of a sum of random
variables, chosen from an array according to a random permutation, from a
Gaussian mixture process. This result lets us prove a functional combinatorial
central limit theorem. We also consider a graph-valued process and bound the
speed of convergence of the distribution of its rescaled edge counts to a
continuous Gaussian process.Comment: will appear in Annales de l'Institut Henri Poincar\'e, Probabilit\'es
et Statistique
Stein's method of exchangeable pairs in multivariate functional approximations
In this paper we develop a framework for multivariate functional
approximation by a suitable Gaussian process via an exchangeable pairs coupling
that satisfies a suitable approximate linear regression property, thereby
building on work by Barbour (1990) and Kasprzak (2020). We demonstrate the
applicability of our results by applying it to joint subgraph counts in an
Erd\H{o}s-Renyi random graph model on the one hand and to vectors of weighted,
degenerate -processes on the other hand. As a concrete instance of the
latter class of examples, we provide a bound for the functional approximation
of a vector of success runs of different lengths by a suitable Gaussian process
which, even in the situation of just a single run, would be outside the scope
of the existing theory
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