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(3) this set of MSS is complete, and (4) any function of the MSS is an

MVUE if the function is unbiased.

E(X)

To see that x is unbiased,

E(X, + X, 2 +...+ X)/n
[E(x,) + E(x.) +...+ E(x) ]/n
(n u)/n

Hence X is an MVUE of EX.

Mood et al.

(1974).

The details of this proof can be obtained in

The result that x is an MVUE is particularly fortu-

itous as the arithmetic mean of the sample has often been used to estimate
EX for real data.
The usual confidence intervals for x, namely

x t t(n-1)

s/vn

;

will be used, with the Central Limit Theorem and the asymptotic normality
of an MLE to justify the assumption of normality.
Because of this
assumption, this confidence interval may perform poorly for small sample
sizes.
The variance estimate thus obtained is not the same as the
variance of x calculated by the maximum likelihood estimation procedure.
However, the calculations are much easier to perform, and this estimator
is the one commonly used in the transuranic literature.
Therefore, of
interest is whether confidence intervals based on this simple variance
estimator are valid.
Of particular concern is the validity of this
approach for small sample sizes, say n = 5.

ROBUSTNESS

Both estimators described above are known to have optimal properties
when used with data derived from their respective distributions.
In
addition, the performance of each estimator when applied to other distribution functions is of interest, i.e., how robust the estimator may be.

613

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