Comparison of three Estimation Procedures for Weibull Distribution based on Progressive Type II Right Censored Data

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Abstract:

In this paper, based on the progressive type II right censored data, we consider estimates of MLE and AMLE of scale and shape parameters of weibull distribution. Also a new type of parameter estimation, named inverse estimation, is introdued for both shape and scale parameters of weibull distribution which is used from order statistics properties in it. We use simulations and study the biases and MSE 's of these three estimation procedures and then compare them with each other. At the end, two numerical examples are used to illustrate the proposed procedures.

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Journal title

volume 17  issue 1

pages  55- 69

publication date 2012-09

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