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首页> 外文期刊>Journal of Modern Applied Statistical Methods >Bayesian Hypothesis Testing of Two Normal Samples using Bootstrap Prior Technique
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Bayesian Hypothesis Testing of Two Normal Samples using Bootstrap Prior Technique

机译:贝叶斯假设使用引导先前技术的两个正常样本的假设检测

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摘要

The most important ingredient in Bayesian analysis is prior or prior distribution. A new prior determination method was developed under the framework of parametric empirical Bayes using bootstrap technique. By way of example, Bayesian estimations of the parameters of a normal distribution with unknown mean and unknown variance conditions were considered, as well as its application in comparing the means of two independent normal samples with several scenarios. A Monte Carlo study was conducted to illustrate the proposed procedure in estimation and hypothesis testing. Results from Monte Carlo studies showed that the bootstrap prior proposed is more efficient than the existing method for determining priors and also better than the frequentist methods reviewed.
机译:贝叶斯分析中最重要的成分是之前或先前分配。 使用引导技术的参数经验贝斯的框架开发了一种新的先前确定方法。 举例来说,考虑了具有未知平均值和未知方差条件的正态分布参数的贝叶斯估计,以及其在将两个独立正常样本的装置与几种情况进行比较。 进行了蒙特卡罗研究,以说明估计和假设检测中的提出程序。 来自蒙特卡罗研究的结果表明,先前提出的自举比现有方法更有效,而且比审查的频繁的方法更好。

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