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http://dx.doi.org/10.5351/CKSS.2006.13.3.503

Kernel Inference on the Inverse Weibull Distribution  

Maswadah, M. (Department of Mathematics, Faculty of Science, South Valley University)
Publication Information
Communications for Statistical Applications and Methods / v.13, no.3, 2006 , pp. 503-512 More about this Journal
Abstract
In this paper, the Inverse Weibull distribution parameters have been estimated using a new estimation technique based on the non-parametric kernel density function that introduced as an alternative and reliable technique for estimation in life testing models. This technique will require bootstrapping from a set of sample observations for constructing the density functions of pivotal quantities and thus the confidence intervals for the distribution parameters. The performances of this technique have been studied comparing to the conditional inference on the basis of the mean lengths and the covering percentage of the confidence intervals, via Monte Carlo simulations. The simulation results indicated the robustness of the proposed method that yield reasonably accurate inferences even with fewer bootstrap replications and it is easy to be used than the conditional approach. Finally, a numerical example is given to illustrate the densities and the inferential methods developed in this paper.
Keywords
Kernel density estimation; conditional inference; covering percentage;
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