高斯过程样条的空间变系数回归:GAM(e)-on

A. Comber, P. Harris, C. Brunsdon
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摘要

摘要本文描述了用观测位置参数化GAM高斯过程(GP)样条作为地理变系数模型的初步研究工作。与GWR类似,该方法可以适应过程的空间异质性,并产生空间分布的局部系数估计。这些可以被映射,以表明异质性的性质。本文研究了在样条中使用的平滑参数的影响,以及它们如何改变模拟的非均质性的性质。它在GAM GP中对这些进行了优化,并且调整后的模型与初始模型具有微妙但重要的差异。这对可以从模型中提取的过程理解(推理)的性质有影响。这反过来又表明需要检查与平滑参数所建议的过程规模相关的所得模型的潜在语义。确定了若干需要进一步开展工作的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatially Varying Coefficient Regression with GAM Gaussian Process splines: GAM(e)-on
Abstract. This paper describes initial work exploring GAM Gaussian Process (GP) splines parameterised by observation location, as a geographical varying coefficient model. Similar to GWR, this approach accommodates process spatial heterogeneity and generates spatially distributed, local coefficient estimates. These can be mapped to indicate the nature of the heterogeneity. The paper investigates the effect of the smoothing parameters used in the splines and how they alter the nature of the modelled heterogeneity. It optimises these in the GAM GP and the tuned model has subtle but important differences with the initial model. This has impacts on the nature of the process understanding (inference) that can be extracted from the model. This in turn suggest the need examine the underlying semantics of the resultant models in relation to the scale of process suggested by the smoothing parameters. A number of areas of further work are identified.
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