The present study is concerned with the determination of a few observations from a sufficiently large complete or censored sample from the extreme value distribution with location and scale parameters μ and σ, respectively, such that the asymptotically best linear unbiased estimators (ABLUE) of the parameters in Ref.[24] yield high efficiencies among other choices of the same number of observations. (All efficiencies considered are relative to the Cramer-Rao lower bounds for regular unbiased estimators.) The study is on the asymptotic theory and under Type II censoring scheme.For the estimation of μ when σ is known, it has been proved that there exists a unique optimum spacing whether the sample is complete, right censored, left censored, or doubly censored. Several tables are prepared to aid in the numerical computation of the estimates as well as to furnish their efficiencies.For the estimation of σ when μ is known, it has been observed that there does not exist a unique optimum spacing. Accordingly we have obtained a spacing based on a complete sample which yields high efficiency. A similar table as above is prepared.When both μ and σ are unknown, we have considered four different spacings based on a complete sample and chosen the one yielding highest efficiency. A table of the efficiencies is also prepared.Finally we apply the above results for the estimation of the scale and/or shape param eters of the Weibull distribution. χ-μ -exp ( -J \, -χ<χ<χ, -χ<μ<&, σ> 0 QUANTILES FOR LINEAR ESTIMATION 383
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