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首页> 外文期刊>Communications in Statistics. B, Simulation and Computation >On the Sampling Distributions of the Estimated Process Loss Indices with Asymmetric Tolerances
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On the Sampling Distributions of the Estimated Process Loss Indices with Asymmetric Tolerances

机译:具有不对称公差的估计过程损失指标的抽样分布

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摘要

Pearn et al. (2006a) proposed a new generalization of expected loss index L″_e to handle processes with both symmetric and asymmetric tolerances. Putting the loss in relative terms, a user needs only to specify the target and the distance from the target at which the product would have zero worth to quantify the performance of a process. The expected loss index L″_e may be expressed as L″_e = L″_(ot) + L″_(pe), which provides an uncontaminated separation between information concerning the process accuracy and the process precision. In order to apply the theory of testing statistical hypothesis to test whether a process is capable or not under normality assumption, in this paper we first derive explicit form for the cumulative distribution function and the probability density function of the natural estimator of the three indices L″_(ot), L″_(pe), and L″_e. We have proved that the sampling distributions of L″_(pe) and L_″(ot) may be expressed as the chi-square distribution and the normal distribution, respectively. And the distribution of L″_e can be described in terms of a mixture of the chi-square distribution and the normal distribution. Then, we develop a decision-making rule based on the estimated index L″_e. Finally, an example of testing L″_e is also presented for illustrative purpose.
机译:Pearn等。 (2006a)提出了预期损失指数L''_ e的新概括,以处理具有对称和非对称公差的过程。相对而言,用户只需指定目标和距目标的距离,产品在该目标处的价值为零即可量化过程的性能。预期损耗指数L” _e可以表示为L” _e = L” _(ot)+ L” _(pe),这在关于过程精度和过程精度的信息之间提供了不受污染的分离。为了应用检验统计假设的理论来检验过程在正态性假设下是否能够工作,在本文中,我们首先导出三个指标L的自然估计量的累积分布函数和概率密度函数的显式形式” _(ot),L” _(pe)和L''_ e。我们已经证明,L''_(pe)和L _''(ot)的采样分布可以分别表示为卡方分布和正态分布。可以用卡方分布和正态分布的混合来描述L''_ e的分布。然后,我们基于估计的指标L''_ e制定决策规则。最后,出于说明性目的,还给出了测试L''_ e的示例。

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