Abstract
Let be i.i.d. random variables sampled from a normal distribution in with unknown parameter , where is the cone of positively definite covariance operators in . Given a smooth functional , the goal is to estimate based on . Let
where is the spectrum of covariance Σ. Let , where is the sample mean and is the sample covariance, based on the observations . For an arbitrary functional , , we define a functional such that
where for and is arbitrary for . This error rate is minimax optimal and similar bounds hold for more general loss functions. If for some and , the rate becomes . Moreover, for , the estimator is shown to be asymptotically efficient. The crucial part of the construction of estimator is a bias reduction method studied in the paper for more general statistical models than normal.
Funding Statement
The first author was supported in part by NSF Grant DMS-1810958.
The second author was supported in part by NSF Grant DMS-1712990.
Acknowledgments
The authors are very thankful to the Associate Editor and anonymous referees for helpful comments and suggestions.
Citation
Vladimir Koltchinskii. Mayya Zhilova. "Estimation of smooth functionals in normal models: Bias reduction and asymptotic efficiency." Ann. Statist. 49 (5) 2577 - 2610, October 2021. https://doi.org/10.1214/20-AOS2047
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