The Statistical Power and Confidence of Some Key Comparison Analysis Methods to Correctly Identify Participant Bias

E. Molloy, A. Koo, B. D. Hall, R. Harding
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引用次数: 1

Abstract

The validity of calibration and measurement capability (CMC) claims by national metrology institutes is supported by the results of international measurement comparisons. Many methods of comparison analysis are described in the literature and some have been recommended by CIPM Consultative Committees. However, the power of various methods to correctly identify biased results is not well understood. In this work, the statistical power and confidence of some methods of interest to the CIPM Consultative Committees were assessed using synthetic data sets with known properties. Our results show that the common mean model with largest consistent subset delivers the highest statistical power under conditions likely to prevail in mature technical fields, where most participants are in agreement and CMC claims can reasonably be supported by the results of the comparison. Our approach to testing methods is easily applicable to other comparison scenarios or analysis methods and will help the metrology community to choose appropriate analysis methods for comparisons in mature technical fields.
正确识别参与者偏差的几种关键比较分析方法的统计能力和置信度
国际计量比较的结果支持了国家计量机构校准和测量能力(CMC)声明的有效性。文献中描述了许多比较分析的方法,其中一些方法已被CIPM咨询委员会推荐。然而,正确识别偏差结果的各种方法的力量还没有得到很好的理解。在这项工作中,使用具有已知属性的合成数据集评估了CIPM咨询委员会感兴趣的一些方法的统计能力和置信度。我们的研究结果表明,在成熟技术领域可能盛行的情况下,具有最大一致子集的共同均值模型提供了最高的统计能力,其中大多数参与者都同意,并且比较结果可以合理地支持CMC的主张。我们的测试方法很容易适用于其他比较场景或分析方法,并将帮助计量界在成熟的技术领域选择合适的分析方法进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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