Using power transformations when approximating quantiles |
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Authors: | Dean H. Fearn Elliott Nebenzahl |
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Affiliation: | Department of Statistics , California State Univ., Havward , Havward, California, 94542 |
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Abstract: | Estimators are obtained tor quantiles of survival distributions. This is accomplished by approximating Lritr distribution of the transtorrneri data, where the transformation used is that of Box and Cox (1964). The normal approximation as in Box and Cox and, in addition, the extreme value approximation are considered. More generally, to use the methods given, the approximating distribution must come from a location-scale family. For some commonly used survival random variables T the performance of the above approximations are evaluated in terms of the ratio of the true quantiles of T to the estimated one, in the long run. This performance is also evaluated for lower quantiles using simulated lognormai, Weibull and gamma data. Several examples are given to illustrate the methodology herein, including one with actual data. |
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Keywords: | reliability power transformations quantises normal extreme value gamma Weibull lognormai survival distributions location-scale families scale invariant estimator |
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