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首页> 外文期刊>Journal of Quality Technology >The Prediction Properties of Classical and Inverse Regression for the Simple Linear Calibration Problem
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The Prediction Properties of Classical and Inverse Regression for the Simple Linear Calibration Problem

机译:简单线性标定问题的经典和逆回归的预测性质

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摘要

The calibration of measurement systems is a fundamental but understudied problem within industrial statistics. In the classical context of this problem, standards produced by the National Institute of Standards and Technology (NIST) are used in chemical, mechanical, electrical, and materials-engineering analyses. Often, applications cast into this calibration framework do not provide "gold standards" such as the standards provided by NIST. This paper considers the classical calibration approach, in which the experiment treats the standards as the regressor and the observed values as the response to calibrate the instrument. The analyst then must invert the resulting regression model in order to use the instrument to make actual measurements in practice. This paper compares this classical approach to inverse regression, which treats the standards as the response and the observed measurements as the regressor in the calibration experiment. Such an approach is intuitively appealing because it is simple and easily implemented in most software. However, it violates some of the basic regression assumptions. In this paper, we study the properties of classical and inverse regression applied to calibration problems, compare their performance, and provide guidance to practitioners.
机译:测量系统的校准是工业统计中的一个基本但尚未研究的问题。在这个问题的经典背景下,由美国国家标准技术研究院(NIST)制定的标准用于化学,机械,电气和材料工程分析。通常,应用到此校准框架中的应用程序不提供“黄金标准”,例如NIST提供的标准。本文考虑了经典的校准方法,在该方法中,实验将标准视为回归,将观测值作为校准仪器的响应。然后,分析师必须将所得的回归模型求逆,以便在实践中使用该仪器进行实际测量。本文将这种经典的反向回归方法进行了比较,该方法将标准视为响应,将观察到的测量值视为校正实验中的回归。这种方法在直观上很有吸引力,因为它在大多数软件中都简单易行。但是,它违反了一些基本的回归假设。在本文中,我们研究了应用于校正问题的经典回归和逆回归的性质,比较了它们的性能,并为从业人员提供了指导。

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