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In statistics, Hodges’ estimator (or the Hodges–Le Cam estimator), named for Joseph Hodges, is a famous counter example of an estimator which is "superefficient", i.e. it attains smaller asymptotic variance than regular efficient estimators. The existence of such a counterexample is the reason for the introduction of the notion of regular estimators.
Contents
Hodges’ estimator improves upon a regular estimator at a single point. In general, any superefficient estimator may surpass a regular estimator at most on a set of Lebesgue measure zero.
Construction
Suppose
Then the Hodges’ estimator
This estimator is equal to
for any α ∈ R. Thus this estimator has the same asymptotic distribution as
Example
Suppose x1, …, xn is an iid sample from normal distribution N(θ, 1) with unknown mean but known variance. Then the common estimator for the population mean θ is the arithmetic mean of all observations:
The mean square error (scaled by n) associated with the regular estimator x is constant and equal to 1 for all θ’s. At the same time the mean square error of the Hodges’ estimator