Adaptive estimator

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In statistics, an adaptive estimator is an estimator in a parametric or semiparametric model with nuisance parameters such that the presence of these nuisance parameters does not affect efficiency of estimation.

Definition

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Formally, let parameter θ in a parametric model consists of two parts: the parameter of interest νNR, and the nuisance parameter ηHR. Thus θ = (ν,η) ∈ N×HR. Then we will say that is an adaptive estimator of ν in the presence of η if this estimator is regular, and efficient for each of the submodels

Adaptive estimator estimates the parameter of interest equally well regardless whether the value of the nuisance parameter is known or not.

The necessary condition for a regular parametric model to have an adaptive estimator is that

where zν and zη are components of the score function corresponding to parameters ν and η respectively, and thus Iνη is the top-right k×m block of the Fisher information matrix I(θ).

Example

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Suppose is the normal location-scale family:

Then the usual estimator is adaptive: we can estimate the mean equally well whether we know the variance or not.

Notes

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  1. ^ Bickel 1998, Definition 2.4.1

Basic references

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  • Bickel, Peter J.; Chris A.J. Klaassen; Ya’acov Ritov; Jon A. Wellner (1998). Efficient and adaptive estimation for semiparametric models. Springer: New York. ISBN 978-0-387-98473-5.{{cite book}}: CS1 maint: publisher location (link)

Other useful references

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