Our purpose is twofold: to present
a prototypical example of the conditioning technique to obtain the best
estimator of a parameter and to show that this
technique resides in the structure of an inner product space. The
technique uses conditioning of an unbiased estimator on a sufficient statistic. This procedure is founded upon the conditional
variance formula, which leads to an inner product space and a geometric
interpretation. The example clearly illustrates the dependence on the sampling
methodology. These advantages show the power and centrality of this process.
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