A review of regularised estimation methods and cross-validation in spatiotemporal statistics

Philipp Otto, Alessandro Fassò, Paolo Maranzano
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Abstract

This review article focuses on regularised estimation procedures applicable to geostatistical and spatial econometric models. These methods are particularly relevant in the case of big geospatial data for dimensionality reduction or model selection. To structure the review, we initially consider the most general case of multivariate spatiotemporal processes (i.e., $g > 1$ dimensions of the spatial domain, a one-dimensional temporal domain, and $q \geq 1$ random variables). Then, the idea of regularised/penalised estimation procedures and different choices of shrinkage targets are discussed. Finally, guided by the elements of a mixed-effects model, which allows for a variety of spatiotemporal models, we show different regularisation procedures and how they can be used for the analysis of geo-referenced data, e.g. for selection of relevant regressors, dimensionality reduction of the covariance matrices, detection of conditionally independent locations, or the estimation of a full spatial interaction matrix.
时空统计中的正则化估计方法和交叉验证综述
这篇综述文章的重点是适用于地理统计和空间计量经济学模型的正则化估计程序。这些方法尤其适用于地理空间大数据的降维或模型选择。为了安排综述的结构,我们首先考虑多变量时空过程的最一般情况(即空间域的维数为 $g > 1$,时间域为一维,随机变量为 $q\geq 1$)。然后,讨论了正则化/惩罚性估计程序的思想和收缩目标的不同选择。最后,在混合效应模型元素的指导下,我们展示了不同的正则化程序,以及如何将它们用于地理参考数据的分析,例如选择相关回归因子、降低协方差矩阵的维度、检测条件独立的位置或估计全空间交互矩阵。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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