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首页> 外文期刊>American Journal of Mathematical and Management Sciences >Estimating Common Scale Parameter of Two Logistic Populations: A Bayesian Study
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Estimating Common Scale Parameter of Two Logistic Populations: A Bayesian Study

机译:估算两个物流人群的共同规模参数:贝叶斯研究

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摘要

Estimation under equality restrictions is an age old problem and has been considered by several researchers in the past due to practical applications and theoretical challenges involved in it. Particularly, the problem has been extensively studied from classical as well as decision theoretic point of view when the underlying distribution is normal. In this paper, we consider the problem when the underlying distribution is non-normal, say, logistic. Specifically, estimation of the common scale parameter of two logistic populations has been considered when the location parameters are unknown. It is observed that closed forms of the maximum likelihood estimators (MLEs) for the associated parameters do not exist. Using certain numerical techniques the MLEs have been derived. The asymptotic confidence intervals have been derived numerically too, as these also depend on the MLEs. Approximate Bayes estimators are proposed using non-informative as well as conjugate priors with respect to the squared error (SE) and the LINEX loss functions. A simulation study has been conducted to evaluate the proposed estimators and compare their performances through mean squared error (MSE) and bias. Finally, two real life examples have been considered in order to show the potential applications of the proposed model and illustrate the method of estimation.
机译:平等限制下的估计是一个历史悠久的问题,并且过去几个研究人员被认为是由于它的实际应用和理论挑战。特别是,当潜在分布正常时,从经典以及决策理论的角度进行了广泛的研究。在本文中,我们认为潜在的分布是非正常的问题,例如,物流。具体地,当位置参数未知时,已经考虑了两个逻辑群体的公共比例参数的估计。观察到,不存在相关参数的最大似然估计器(MLES)的封闭形式。使用某些数值技术已派生MLES。渐近置信区间也得到了数值也得出的,因为这些也取决于马尔斯。使用非信息性和共轭前沿的近似贝叶斯估计器相对于平方误差(SE)和LINX损耗功能提出。已经进行了仿真研究以评估所提出的估算器,并通过均方误差(MSE)和偏置来比较它们的性能。最后,已经考虑了两个现实生活示例以显示所提出的模型的潜在应用并说明估计方法。

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