Estimation of smooth functionals in high-dimensional models: bootstrap chains and Gaussian approximation
Vladimir Koltchinskii

TL;DR
This paper develops a method for estimating smooth functionals of high-dimensional parameters using bootstrap chains and Gaussian approximation, achieving asymptotic normality and efficiency under certain smoothness and dimensionality conditions.
Contribution
It introduces a new estimator for functionals in high-dimensional models that attains asymptotic normality and efficiency leveraging Gaussian approximation techniques.
Findings
Constructed an asymptotically normal estimator for $f( heta)$.
Derived bounds on estimation error depending on smoothness and dimension.
Achieved asymptotic efficiency in certain high-dimensional exponential models.
Abstract
Let be an observation sampled from a distribution with an unknown parameter being a vector in a Banach space (most often, a high-dimensional space of dimension ). We study the problem of estimation of for a functional of some smoothness based on an observation Assuming that there exists an estimator of parameter such that is sufficiently close in distribution to a mean zero Gaussian random vector in we construct a functional such that is an asymptotically normal estimator of with rate provided that and for some We also derive general upper bounds on…
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Taxonomy
TopicsStatistical Methods and Inference · Cancer, Lipids, and Metabolism
