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A Comparison of Variance Lower Bound between the Optimum Allocation and the Power Allocation

  • Published : 2003.04.01

Abstract

In this paper, we study the efficiency of the stratified estimator in related with the variance lower bound of Horvitz-Thompson estimator subject to the superpopulation model. Especially, we compare the variance lower bound of optimum allocation with that of power allocation subject to Dalenius-Hedges stratification.

Keywords

References

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