In statistics a uniformly minimum-variance unbiased estimator or minimum-variance unbiased estimator (UMVUE or MVUE) is an unbiased estimator that has lower variance than any other unbiased estimator for all possible values of the parameter.
The question of determining the UMVUE, if one exists, for a particular problem is important for practical statistics, since less-than-optimal procedures would naturally be avoided, other things being equal. This has led to substantial development of statistical theory related to the problem of optimal estimation. While the particular specification of "optimal" here — requiring unbiasedness and measuring "goodness" using the variance — may not always be what is wanted for any given practical situation, it is one where useful and generally applicable results can be found.
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Consider estimation of
based on data
i.i.d. from some member of a family of densities
, where
is the parameter space. An unbiased estimator
of
is UMVU if
,

for any other unbiased estimator 
If an unbiased estimator of
exists, then one can prove there is an essentially unique MVUE. Using the Rao–Blackwell theorem one can also prove that determining the MVUE is simply a matter of finding a complete sufficient statistic for the family
and conditioning any unbiased estimator on it.
Further, by the Lehmann–Scheffé theorem, an unbiased estimator that is a function of a complete, sufficient statistic is the UMVU estimator.
Put formally, suppose
is unbiased for
, and that
is a complete sufficient statistic for the family of densities. Then

is the MVUE for 
A Bayesian analog is a Bayes estimator, particularly with minimum mean square error (MMSE).
An efficient estimator need not exist, but if it does and if it is unbiased, it is the MVUE. Since the mean squared error (MSE) of an estimator δ is
![\operatorname{MSE}(\delta) = \mathrm{var}(\delta) +[ \mathrm{bias}(\delta)]^{2}\](http://wpcontent.answcdn.com/wikipedia/en/math/1/1/6/11619ffb89ab2ec76aa458362e905b93.png)
the MVUE minimizes MSE among unbiased estimators. In some cases biased estimators have lower MSE because they have a smaller variance than does any unbiased estimator; see estimator bias.
Consider the data to be a single observation from an absolutely continuous distribution on
with density

and we wish to find the UMVU estimator of

First we recognize that the density can be written as

Which is an exponential family with sufficient statistic
. In fact this is a full rank exponential family, and therefore
is complete sufficient. See exponential family for a derivation which shows

Therefore

Clearly
is unbiased, thus the UMVU estimator is

This example illustrates that an unbiased function of the complete sufficient statistic will be UMVU.

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