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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Optimal design for multivariate observations in seemingly unrelated linear models
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Optimal design for multivariate observations in seemingly unrelated linear models

机译:似乎无关的线性模型中多变量观测的最优设计

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摘要

The concept of seemingly unrelated models is used for multivariate observations when the components of the multivariate dependent variable are governed by mutually different sets of explanatory variables and the only relation between the components is given by a fixed covariance within the observational units. A multivariate weighted least squares estimator is employed which takes the within units covariance matrix into account. In an experimental setup, where the settings of the explanatory variables may be chosen freely by an experimenter, it might be thus tempting to choose the same settings for all components to end up with a multivariate regression model, in which the ordinary and the least squares estimators coincide. However, we will show that under quite natural conditions the optimal choice of the settings will be a product type design which is generated from the optimal counterparts in the univariate models of the single components. This result holds even when the univariate models may change from component to component. For practical applications the full factorial product type designs may be replaced by fractional factorials or orthogonal arrays without loss of efficiency. (C) 2015 Elsevier Inc. All rights reserved.
机译:当多元因变量的组成部分由相互不同的解释变量集控制且组成部分之间的唯一关系由观测单位内的固定协方差给出时,看似无关的模型的概念用于多元观测。采用多元加权最小二乘估计器,该估计器考虑了单位内协方差矩阵。在实验设置中,实验人员可以自由选择解释变量的设置,因此可能很容易为所有组件选择相同的设置,以得出多元回归模型,其中,普通平方和最小平方估计量一致。但是,我们将显示,在非常自然的条件下,设置的最佳选择将是根据单个组件的单变量模型中的最佳对应项生成的产品类型设计。即使单变量模型可能因组件而异,该结果仍然成立。对于实际应用,可以将全阶乘积类型设计替换为分数阶乘或正交阵列,而不会降低效率。 (C)2015 Elsevier Inc.保留所有权利。

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