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One-Sided Approximate Predication Intervals for at Least p of m Observations From a Gamma Population at Each of r Locations

机译:来自r个位置中每个位置的γ种群的至少m个观测值的单侧近似预测间隔

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摘要

We develop simultaneous approximate statistical prediction limits for a gamma-distributed random variable. Specifically, we develop an upper prediction limit (UPL) for p of m future samples at each of r locations, based on a previous sample of n measurements. A typical example is the environmental monitoring problem in which the distribution of an analyte of concern is typically non-Gaussian, simultaneous determinations are required for multiple locations (e.g., ground-water monitoring wells), and, in the event of an initial exceedance of the prediction limit, one or more verification samples are obtained to confirm evidence of an impact on the environment. For example, consider a ground-water monitoring program with r wells and the requirement that at least p = 1 of the m = 2 samples in each of the r wells be below the UPL. We provide derivation of simultaneous approximate gamma UPLs, illustration of the relevance of the gamma distribution to environmental data, a limited simulation study of type I and II error rates achieved using the method and comparison with normal and nonparametric alternatives, tables that aid computation, and an example using ground-water monitoring data.
机译:我们为伽玛分布的随机变量开发了同时的近似统计预测极限。具体来说,我们基于n次测量的先前样本,为r个位置中的每个地点的m个未来样本中的p个制定了上限预测(UPL)。一个典型的例子是环境监测问题,其中关注的分析物的分布通常是非高斯分布的,需要同时确定多个位置(例如,地下水监测井),并且如果最初超过在预测极限下,获得一个或多个验证样本以确认对环境有影响的证据。例如,考虑具有r口井的地下水监测程序,并且要求r口中的每口井中的m = 2个样本中至少p = 1低于UPL。我们提供了同时近似伽玛UPL的推导,伽玛分布与环境数据的相关性说明,使用该方法获得的I型和II型错误率的有限模拟研究以及与正常和非参数替代方法的比较,辅助计算的表以及一个使用地下水监测数据的例子。

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