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Random-effect models with singular precision

机译:具有奇异精度的随机效应模型

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摘要

We show that smoothing spline, intrinsic autoregression (IAR) and state-space model can be formulated as partially specified random-effect model with singular precision (SP). Various fitting methods have been suggested for the aforementioned models and this paper investigates the relationships among them, once the models have been placed under a single framework. Some methods have been previously shown to give the best linear unbiased predictors (BLUPs) under some random-effect models and here we show that they are in fact uniformly BLUPs (UBLUPs) under a class of models that are generated by the SP of random effects. We offer some new interpretations of the UBLUPs under models of SP and define BLUE and BLUP in these partially specified models without having to specify the covariance. We also show how the full likelihood inferences for random-effect models can be made for these models, so that the maximum likelihood (ML) and restricted maximum likelihood (REML) estimators can be used for the smoothing parameters in splines, etc.
机译:我们表明,平滑样条,内在自回归(IAR)和状态空间模型可以表示为具有奇异精度(SP)的部分指定的随机效应模型。对于上述模型,已经提出了各种拟合方法,一旦将模型放置在单个框架下,本文将研究它们之间的关系。先前已经显示了一些方法在某些随机效应模型下可以提供最佳的线性无偏预测变量(BLUP),在这里,我们证明了在随机效应SP生成的一类模型下,它们实际上是统一的BLUP(UBLUPs)。 。我们对SP模型下的UBLUP提供了一些新的解释,并在这些局部指定的模型中定义了BLUE和BLUP,而无需指定协方差。我们还展示了如何针对这些模型进行随机效应模型的完全似然推断,从而可以将最大似然(ML)和受限最大似然(REML)估计量用于样条曲线中的平滑参数等。

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