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Estimation of smooth functionals of covariance operators: jackknife bias reduction and bounds in terms of effective rank

Abstract

Let EE be a separable Banach space and let X,X1,,Xn,X, X_1,\dots, X_n, \dots be i.i.d. Gaussian random variables taking values in EE with mean zero and unknown covariance operator Σ:EE.\Sigma: E^{\ast}\mapsto E. The complexity of estimation of Σ\Sigma based on observations X1,,XnX_1,\dots, X_n is naturally characterized by the so called effective rank of Σ:\Sigma: r(Σ):=EΣX2Σ,{\bf r}(\Sigma):= \frac{{\mathbb E}_{\Sigma}\|X\|^2}{\|\Sigma\|}, where Σ\|\Sigma\| is the operator norm of Σ.\Sigma. Given a smooth real valued functional ff defined on the space L(E,E)L(E^{\ast},E) of symmetric linear operators from EE^{\ast} into EE (equipped with the operator norm), our goal is to study the problem of estimation of f(Σ)f(\Sigma) based on X1,,Xn.X_1,\dots, X_n. The estimators of f(Σ)f(\Sigma) based on jackknife type bias reduction are considered and the dependence of their Orlicz norm error rates on effective rank r(Σ),{\bf r}(\Sigma), the sample size nn and the degree of H\"older smoothness ss of functional ff are studied. In particular, it is shown that, if r(Σ)nα{\bf r}(\Sigma)\lesssim n^{\alpha} for some α(0,1)\alpha\in (0,1) and s11α,s\geq \frac{1}{1-\alpha}, then the classical n\sqrt{n}-rate is attainable and, if s>11α,s> \frac{1}{1-\alpha}, then asymptotic normality and asymptotic efficiency of the resulting estimators hold. Previously, the results of this type (for different estimators) were obtained only in the case of finite dimensional Euclidean space E=RdE={\mathbb R}^d and for covariance operators Σ\Sigma whose spectrum is bounded away from zero (in which case, r(Σ)d{\bf r}(\Sigma)\asymp d).

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