Gaussian processes are widely employed as versatile modelling and predictive tools in spatial statistics, functional data analysis, computer modelling and diverse applications of machine learning. They have been widely studied over Euclidean spaces, where they are specified using covariance functions or covariograms for modelling complex dependencies. There is a growing literature on Gaussian processes over Riemannian manifolds in order to develop richer and more flexible inferential frameworks. While Gaussian processes have been extensively studied for asymptotic inference on Euclidean spaces using well-defined (positive definite) covariograms, such results are relatively sparse on Riemannian manifolds. We undertake analogous developments for Gaussian processes constructed over compact Riemannian manifolds. Building upon the recently introduced Mat\'ern covariograms on a compact Riemannian manifold, we employ formal notions and conditions for the equivalence of two Mat\'ern Gaussian random measures on compact manifolds to derive the microergodic parameters and formally establish the consistency of their maximum likelihood estimates as well as asymptotic optimality of the best linear unbiased predictor. The circle and sphere are studied as two specific examples of compact Riemannian manifolds with numerical experiments to illustrate and corroborate the theory.
翻译:高斯进程被广泛用作空间统计、功能数据分析、计算机建模和机器学习的多种应用方面的多功能建模和预测工具,在欧几里德空间进行了广泛研究,使用共变函数或共变图来模拟复杂的依赖性;关于高斯进程在里曼多元体上的高斯进程文献越来越多,以开发更丰富、更灵活的推论框架;虽然对高斯进程进行了广泛研究,以利用明确界定的(确定)正数正数正数方位方位对欧几里德空间进行无症状的推断,但这类结果在里曼多元体上相对稀少;我们用紧凑的里曼多元体模型构建的高斯进程进行类似的开发;根据最近推出的马特尔多尼多方位方位图,我们采用正式的概念和条件,对紧凑方位方位方位的马特尔恩高斯随机计量进行等同,以得出微方位参数,并正式确定其最大可能性估计的一致性,作为正数的理论,作为最精确的轨道模型,作为最精确的模型。