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Breuer-Major Theorems for Hilbert Space-Valued Random Variables

19 May 2024
M. Duker
Pavlos Zoubouloglou
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Abstract

Let {Xk}k∈Z\{X_k\}_{k \in \mathbb{Z}}{Xk​}k∈Z​ be a stationary Gaussian process with values in a separable Hilbert space H1\mathcal{H}_1H1​, and let G:H1→H2G:\mathcal{H}_1 \to \mathcal{H}_2G:H1​→H2​ be an operator acting on XkX_kXk​. Under suitable conditions on the operator GGG and the temporal and cross-sectional correlations of {Xk}k∈Z\{X_k\}_{k \in \mathbb{Z}}{Xk​}k∈Z​, we derive a central limit theorem (CLT) for the normalized partial sums of {G[Xk]}k∈Z\{G[X_k]\}_{k \in \mathbb{Z}}{G[Xk​]}k∈Z​. To prove a CLT for the Hilbert space-valued process {G[Xk]}k∈Z\{G[X_k]\}_{k \in \mathbb{Z}}{G[Xk​]}k∈Z​, we employ techniques from the recently developed infinite dimensional Malliavin-Stein framework. In addition, we provide quantitative and continuous time versions of the derived CLT. In a series of examples, we recover and strengthen limit theorems for a wide array of statistics relevant in functional data analysis, and present a novel limit theorem in the framework of neural operators as an application of our result.

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