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Performance of confidence interval tests for the ratio of two lognormal means applied to Weibull and gamma distribution data

机译:对应用于Weibull和gamma分布数据的两个对数正态平均值的比率进行置信区间检验

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Five estimation approaches have been developed to compute the confidence interval (CI) for the ratio of two lognormal means: (1)7, the CI based on the t-test procedure; (2) ML, a traditional maximum likelihood-based approach; (3) BT, a bootstrap approach; (4) R, the signed log-likelihood ratio statistic; and (5) R* , the modified signed log-likelihood ratio statistic. The purpose of this study was to assess the performance of these five approaches when applied to distributions other than lognormal distribution, for which they were derived. Performance was assessed in terms of average length and coverage probability of the CIs for each estimation approaches (i.e., T., ML, BT, R, and R~*) when data followed a Weibull or gamma distribution. Four models were discussed in this study. In Model 1, the sample sizes and variances were equal within the two groups. In Model 2, the sample sizes were equal but variances were different within the two groups. In Model 3, the variances were different within the two groups and the larger variance was paired with the larger sample size. In Model 4, the variances were different within the two groups and the larger variance was paired with the smaller sample size. The results showed that when the variances of the two groups were equal, the (-test performed well, no matter what the underlying distribution was and how large the variances of the two groups were. The BT approach performed better than the others when the underlying distribution was not lognormal distribution, although it was inaccurate when the variances were large. The R~* test did not perform well when the underlying distribution was Weibull or gamma distributed data, but it performed best when the data followed a lognormal distribution.
机译:已经开发出五种估计方法来计算两个对数正态平均值之比的置信区间(CI):(1)7,基于t检验程序的CI; (2)ML,传统的基于最大似然的方法; (3)BT,一种引导方法; (4)R,有符号对数似然比统计量; (5)R *,修正的对数似然比统计量。本研究的目的是评估将这五种方法应用于对数正态分布以外的其他分布时的性能,并以此为依据。当数据遵循Weibull或gamma分布时,根据每种估计方法(即T.,ML,BT,R和R *)的CI的平均长度和覆盖概率来评估性能。在这项研究中讨论了四个模型。在模型1中,两组样本量和方差相等。在模型2中,两组样本量相等,但方差不同。在模型3中,两组之间的方差不同,方差越大,样本量越大。在模型4中,两组之间的方差不同,方差越大,样本量越小。结果表明,当两组的方差相等时,无论基础分布是什么,两组的方差有多大,(-检验)效果都很好。分布不是对数正态分布,尽管在方差较大时不准确; R〜*检验在基础分布为Weibull或gamma分布数据时表现不佳,但在数据遵循对数正态分布时表现最佳。

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