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Multivariate quality control using loss-scaled principal components.

机译:使用损失标度的主成分进行多元质量控制。

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摘要

We consider a principal components based decomposition of the expected value of the multivariate quadratic loss function, i.e., MQL. The principal components are formed by scaling the original data by the contents of the loss constant matrix, which defines the economic penalty associated with specific variables being off their desired target values. We demonstrate the extent to which a subset of these "loss-scaled principal components", i.e., LSPC, accounts for the two components of expected MQL, namely the trace-covariance term and the off target vector product. We employ the LSPC to solve a robust design problem of full and reduced dimensionality with deterministic models that approximate the true solution and demonstrate comparable results in less computational time. We also employ the LSPC to construct a test statistic called loss-scaled T2 for multivariate statistical process control. We show for one case how the proposed test statistic has faster detection than Hotelling's T2 of shifts in location for variables with high weighting in the MQL. In addition we introduce a principal component based decomposition of Hotelling's T 2 to diagnose the variables responsible for driving the location and/or dispersion of a subgroup of multivariate observations out of statistical control. We demonstrate the accuracy of this diagnostic technique on a data set from the literature and show its potential for diagnosing the loss-scaled T2 statistic as well.
机译:我们考虑基于多元二次损失函数(MQL)期望值分解的主成分。通过用损耗常数矩阵的内容缩放原始数据来形成主成分,损耗常数矩阵的定义是与特定变量偏离其期望目标值相关的经济损失。我们证明了这些“按比例缩放的主成分”的子集(即LSPC)在多大程度上占了预期MQL的两个成分,即跟踪协方差项和偏离目标向量积。我们采用LSPC来解决具有确定性模型的全维和降维的鲁棒性设计问题,这些模型逼近真实的解决方案,并在较少的计算时间内证明了可比的结果。我们还使用LSPC构造了一个用于多变量统计过程控制的测试统计量,称为损失标度T2。对于一个案例,我们展示了对于MQL中具有高权重的变量,建议的检验统计量如何比Hotelling的位置移位T2更快地检测到。此外,我们引入了基于主成分的Hotelling T 2分解,以诊断变量,这些变量负责驱动多变量观测子集的位置和/或分散,从而超出了统计控制范围。我们从文献资料中证明了该诊断技术的准确性,并显示了其在诊断损失定标的T2统计量中的潜力。

著录项

  • 作者

    Murphy, Terrence E.;

  • 作者单位

    Georgia Institute of Technology.;

  • 授予单位 Georgia Institute of Technology.;
  • 学科 Engineering Industrial.; Statistics.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 248 p.
  • 总页数 248
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;统计学;
  • 关键词

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