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NONPARAMETRIC QUANTILE ESTIMATION FROM RECORD-BREAKING DATA
Authors:Sneh  Gulati WJ Padgett
Institution:Florida International University and University of South Carolina
Abstract:Sometimes, in industrial quality control experiments and destructive stress testing, only values smaller than all previous ones are observed. Here we consider nonparametric quantile estimation, both the ‘sample quantile function’ and kernel-type estimators, from such record-breaking data. For a single record-breaking sample, consistent estimation is not possible except in the extreme tails of the distribution. Hence replication is required, and for m. such independent record-breaking samples the quantile estimators are shown to be strongly consistent and asymptotically normal as m-→∞. Also, for small m, the mean-squared errors, biases and smoothing parameters (for the smoothed estimators) are investigated through computer simulations.
Keywords:Record values  kernel estimators  consistency  asymptotic normality  quantile function
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