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Evaluation of Data with Systematic Errors

机译:具有系统错误的数据评估

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摘要

Application-oriented evaluated nuclear data libraries such as ENDF and JEFF contain not only recommended values but also uncertainty information in the form of "covariance" or "error flies. " These can neither be constructed nor utilized properly without a thorough understanding of uncertainties and correlations. It is shown how incomplete information about errors is described by multivariate probability distributions or, more summarily, by covariance matrices, and how correlations are caused by incompletely known common errors. Parameter estimation for the practically most important case of the Gaussian distribution with common errors is developed in close analogy to the more familiar case without. The formalism shows that, contrary to widespread belief, common ( "systematic") and uncorrelated ( "random" or "statistical") errors are to be added in quadrature. It also shows explicitly that repetition of a measurement reduces mainly the statistical uncertainties but not the systematic ones. While statistical uncertainties are readily estimated from the scatter of repeatedly measured data, systematic uncertainties can only be inferred from prior information about common errors and their propagation. The optimal way to handle error-affected auxiliary quantities ("nuisance parameters") in data fitting and parameter estimation is to adjust them on the same footing as the parameters of interest and to integrate (marginalize) them out of the joint posterior distribution afterward.
机译:面向应用的经过评估的核数据库,例如ENDF和JEFF,不仅包含建议值,而且还包含“协方差”或“错误蝇”形式的不确定性信息。如果不充分了解不确定性和相关性,就无法正确构建或利用这些信息。 。它显示了如何通过多元概率分布或更概括地通过协方差矩阵描述有关错误的不完全信息,以及如何由不完全已知的常见错误引起相关性。对于具有常见误差的高斯分布的实践中最重要的情况,参数估计是与更常见的没有误差的情况非常相似地开发的。形式主义表明,与普遍的看法相反,常见的(“系统的”)和不相关的(“随机的”或“统计的”)错误将以正交方式添加。它还清楚地表明,重复进行测量主要可以减少统计上的不确定性,而不会减少系统上的不确定性。尽管从重复测量的数据的分散性很容易估计出统计不确定性,但是只能从有关常见错误及其传播的先验信息中推断出系统不确定性。在数据拟合和参数估计中处理受错误影响的辅助量(“讨厌的参数”)的最佳方法是,在与关注参数相同的基础上调整它们,然后将它们集成(边缘化)在关节后验分布之外。

著录项

  • 来源
    《Nuclear science and engineering》 |2003年第3期|p.342-353|共12页
  • 作者

    F. H. Froehner;

  • 作者单位

    Forschungszentrum Karlsruhe Institut fuer Neutronenphysik und Reaktortechnik Postfach 3640 D-76021 Karlsruhe, Germany;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 原子能技术;
  • 关键词

  • 入库时间 2022-08-18 00:45:17

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