Comparison of Bayes Estimators for Parameter and Relia-bility Function for Inverse Rayleigh Distribution by Using Generalized Square Error Loss Function

H. Rasheed
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引用次数: 4

Abstract

In the current study, we have been derived some Basyian estimators for the parameter and relia-bility function of the inverse Rayleigh distribution under Generalized squared error loss function. In order to get the best understanding of the behavior of Bayesian analysis, we consider non-informative prior for the scale parameter using Jefferys prior Information as well as informative prior density represented by Gamma distribution. Monte-Carlo simulation have been employed to compare the behavior of different estimates for the scale parameter and reliability function of in-verse Rayleigh distribution based on mean squared errors and Integrated mean squared errors, respectively. In the current study, we observed that more occurrence of Bayesian estimate using Generalized squared error loss function using Gamma prior is better than other estimates for all cases
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利用广义平方误差损失函数对反瑞利分布参数和可靠性函数的Bayes估计量的比较
在本研究中,我们推导了广义误差平方损失函数下逆瑞利分布的参数和可靠度函数的一些Basyian估计。为了更好地理解贝叶斯分析的行为,我们使用Jefferys先验信息和Gamma分布表示的信息先验密度来考虑尺度参数的非信息先验。采用蒙特卡罗模拟方法,分别比较了基于均方误差和积分均方误差的反瑞利分布尺度参数和可靠性函数的不同估计的行为。在目前的研究中,我们观察到,在所有情况下,使用Gamma先验的广义平方误差损失函数的贝叶斯估计比其他估计出现得更多
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