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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

Formally, let parameter θ in a parametric model consists of two parts: the parameter of interest νN⊆ℝk, and the nuisance parameter ηH⊆ℝm. Thus θ = (ν,η)∈N×H⊆ℝk+m. Then we will say that is an adaptive estimator of ν in the presence of η if this estimator is regular on and efficient for each of the submodels [1]

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 Iνη is the top-right k×m block of the Fisher information matrix I(θ).

Example

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.

Basic references

  • Efficient and adaptive estimation for semiparametric models. Springer: New York. 1998. ISBN 0-387-98473-9. {{cite book}}: Unknown parameter |authors= ignored (help)CS1 maint: publisher location (link)

Other useful references

Notes

  1. ^ Bickel 1998, Definition 2.4.1