A class of always pooling shrinkage testimators for the Weibull model

Z. Al-Hemyari, H. A. Al-Dabag, Ali Al-Humairi
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Abstract

Utilising the prior information or additional information from the past in new estimation processes has been receiving considerable attention in the last few decades - as such appears from the list of the references of this paper. In fact, the shrinkage testimators were developed originally for the purpose of utilising the prior information in new estimation problems. In this paper, we have developed a general class of shrinkage testimator, and because it always uses the prior value, are called the always pooling shrinkage testimator for any parameter or distribution. The expressions of bias, risk, risk ratio, relative efficiency, region and shrinkage weight function are derived. The dual importance of the proposed class of testimators are in using the prior information in both stages, something which has significant influence in increasing the relative efficiency and reduction of the sample size required. The comparisons, recommendations, discussions and limitations are provided in this paper.
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一类威布尔模型的总池化收缩估计
在过去的几十年里,在新的估计过程中利用先验信息或来自过去的附加信息已经受到了相当大的关注——正如本文的参考文献列表所示。实际上,收缩估计器最初是为了在新的估计问题中利用先验信息而开发的。本文提出了一种通用的收缩估计方法,由于它总是使用先验值,所以对于任何参数或分布,我们称之为总是池化收缩估计方法。推导了偏差、风险、风险比、相对效率、区域和收缩权函数的表达式。拟议的一类证人的双重重要性在于在这两个阶段都使用了先前的资料,这对提高相对效率和减少所需的样本量具有重大影响。本文给出了比较、建议、讨论和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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