November 2021 Universal sieve-based strategies for efficient estimation using machine learning tools
Hongxiang Qiu, Alex Luedtke, Marco Carone
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Bernoulli 27(4): 2300-2336 (November 2021). DOI: 10.3150/20-BEJ1309

Abstract

Suppose that we wish to estimate a finite-dimensional summary of one or more function-valued features of an underlying data-generating mechanism under a nonparametric model. One approach to estimation is by plugging in flexible estimates of these features. Unfortunately, in general, such estimators may not be asymptotically efficient, which often makes these estimators difficult to use as a basis for inference. Though there are several existing methods to construct asymptotically efficient plug-in estimators, each such method either can only be derived using knowledge of efficiency theory or is only valid under stringent smoothness assumptions. Among existing methods, sieve estimators stand out as particularly convenient because efficiency theory is not required in their construction, their tuning parameters can be selected data adaptively, and they are universal in the sense that the same fits lead to efficient plug-in estimators for a rich class of estimands. Inspired by these desirable properties, we propose two novel universal approaches for estimating function-valued features that can be analyzed using sieve estimation theory. Compared to traditional sieve estimators, these approaches are valid under more general conditions on the smoothness of the function-valued features by utilizing flexible estimates that can be obtained, for example, using machine learning.

Funding Statement

This work was partially supported by the National Institutes of Health under award number DP2-LM013340 and R01HL137808. The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health.

Citation

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Hongxiang Qiu. Alex Luedtke. Marco Carone. "Universal sieve-based strategies for efficient estimation using machine learning tools." Bernoulli 27 (4) 2300 - 2336, November 2021. https://doi.org/10.3150/20-BEJ1309

Information

Received: 1 March 2020; Revised: 1 August 2020; Published: November 2021
First available in Project Euclid: 24 August 2021

MathSciNet: MR4303884
zbMATH: 1476.62067
Digital Object Identifier: 10.3150/20-BEJ1309

Keywords: Asymptotic efficiency , nonparametric inference , sieve estimation

Rights: Copyright © 2021 ISI/BS

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Vol.27 • No. 4 • November 2021
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