主观信息的价值:一个实证评估

S. Dwyer
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引用次数: 0

摘要

计量工程师想要技术上正确的答案。管理者想要做出权衡成本和产品价值的决策。校准人员希望他们的工作有价值。校准间隔决定了测量的可靠性、校准预算和每次校准的价值。当我们决定多久进行一次校准时,我们会影响整个校准程序的价值。不幸的是,我们并不总是有足够的历史校准结果数据来预测高置信度的最佳校准间隔。尽管贝叶斯统计理论提供了一种包括独立数据源来补充校准结果数据的方法,但有限的经验证据不足以评估贝叶斯统计对测量可靠性的预测。文献中没有例子来衡量主观信息对测量可靠性的估计有多好
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Value of Subjective Information: An Empirical Assessment
Metrology engineers want technically correct answers. Managers want to make decisions that trade off cost against product value. Calibration personnel want their work to count. Calibration intervals drive measurement reliability, the calibration budget, and the value of every calibration. We affect the value of our entire calibration program when we decide how often to calibrate. Unfortunately, we don’t always have enough historical calibration results data to predict the best calibration interval with a high degree of confidence. Although Bayesian statistical theory provides a method for including independent data sources to supplement calibration results data, limited empirical evidence exists to assess how well Bayesian statistics predicts measurement reliability. The literature has no example that measures how well subjective information estimates measurement reliability
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