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A penalized likelihood method for nonseparable space-time generalized additive models

机译:不可分时空广义加性模型的惩罚似然法

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摘要

In this paper, we study space-time generalized additive models. We apply the penalyzed likelihood method to fit generalized additive models (GAMs) for nonseparable spatio-temporal correlated data in order to improve the estimation of the response and smooth terms of GAMs. The results show that our space-time generalized additive models estimated response and smooth terms reasonable well, and in addition, the mean squared error, mean absolute deviation and coverage intervals improved considerably compared to the classic GAM. An application on particulate matter concentration in the North-Italian region of Piemonte is also presented.
机译:在本文中,我们研究时空广义加性模型。我们将不可分析的时空方法应用于非可分时空相关数据的广义加性模型(GAMs),以改进GAMs的响应估计和平滑项。结果表明,与传统GAM相比,我们的时空广义加性模型可以很好地估计响应和平滑项,此外,均方误差,平均绝对偏差和覆盖区间也得到了显着改善。还介绍了皮埃蒙特北意大利地区颗粒物浓度的应用。

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