Smooth nonparametric estimation of thedistribution and density functions from record-breaking data |
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Authors: | S. Gulati W.J. Padgett |
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Affiliation: | 1. Department of Statistics , Florida International University , Miami, Florida, 33199;2. Department of Statistics , University of South Carolina , Columbia, South Carolina, 29208 |
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Abstract: | In some experiments, such as destructive stress testing and industrial quality control experiments, only values smaller than all previous ones are observed. Here, for such record-breaking data, kernel estimation of the cumulative distribution function and smooth density estimation is considered. For a single record-breaking sample, consistent estimation is not possible, and replication is required for global results. For m independent record-breaking samples, the proposed distribution function and density estimators are shown to be strongly consistent and asymptotically normal as m → ∞. Also, for small m, the mean squared errors and biases of the estimators and their smoothing parameters are investigated through computer simulations. |
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Keywords: | record samples kernel estimation consistency |
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