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Out-of-specification test results from the statistical point of view.

机译:从统计的角度来看,不合格的测试结果。

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Although a generally accepted procedure has now been established for the organizational handling of out-of-specification test results, the uncertainty surrounding their statistical evaluation persists. Two statistical equations, the prediction and the confidence interval, are sufficient to examine whether data numbers indicate out-of-specification (OOS) results or not. This is demonstrated by means of 10 examples. These equations are usually sufficient to specify limit values as well. A number of consequences have been derived from a discussion of borderline cases: (A) If only one measured value is OOS, the same is true for the whole result (there are three exceptions: high data numbers, outliers, or the reportable result is not the single value but e.g. the mean). (B) The result is not automatically within specification, if this holds true for all measurements. If all measurements are close to the specification limit and the measurement error is high, an OOS result is still possible. (C) If it is clear that the obtained data will be close to the limit, a precisely working method and a relatively high data number is required. In order to obtain future measurements that remain within specification, the difference between the limit and the mean value must not become smaller than 1.65 times the standard deviation, even if very high numbers of measurements are provided. Procedures to deal with extreme values, so-called outliers, are not straightforward. The statistical evaluation is troublesome, because the probability distribution cannot be determined. This problem is discussed by another four examples. In several cases the outlier can be detected without doubt, for example, using Dixon's test or the box plot. However, there are a number of borderline cases, when a value is suspected to be an outlier, but this cannot be proven by statistics [7,9].
机译:尽管现在已经建立了用于处理不合格测试结果的组织通用的程序,但是围绕其统计评估的不确定性仍然存在。预测和置信区间这两个统计方程足以检查数据编号是否表示不合格(OOS)结果。这通过10个示例得到证明。这些公式通常也足以指定极限值。关于边界案例的讨论产生了许多后果:(A)如果只有一个测量值是OOS,则对整个结果也是如此(存在三个例外:高数据量,离群值或可报告结果是不是单一值,而是平均值。 (B)如果所有测量均适用,则结果并非自动符合规格。如果所有测量值都接近规格极限并且测量误差很大,那么仍然可能出现OOS结果。 (C)如果很清楚所获得的数据将接近极限,则需要一种精确的工作方法和相对较高的数据数量。为了获得将来仍在规格范围内的测量值,即使提供非常大量的测量值,限值和平均值之间的差也不得小于标准偏差的1.65倍。处理极端值(所谓的异常值)的过程并不简单。统计评估很麻烦,因为无法确定概率分布。此问题将通过另外四个示例进行讨论。在某些情况下,可以毫无疑问地检测到异常值,例如,使用Dixon检验或箱形图。但是,在许多临界情况下,当一个值被怀疑是一个异常值时,但这不能由统计数据证明[7,9]。

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