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Linear Operators and Stochastic Partial Differential Equations in Gaussian Process Regression

机译:高斯过程回归中的线性算子和随机偏微分方程

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In this paper we shall discuss an extension to Gaussian process (GP) regression models, where the measurements are modeled as linear functionals of the underlying GP and the estimation objective is a general linear operator of the process. We shall show how this framework can be used for modeling physical processes involved in measurement of the GP and for encoding physical prior information into regression models in form of stochastic partial differential equations (SPDE). We shall also illustrate the practical applicability of the theory in a simulated application.
机译:在本文中,我们将讨论对高斯过程(GP)回归模型的扩展,其中将度量建模为基础GP的线性函数,而估计目标是该过程的一般线性算子。我们将展示如何使用此框架对GP的测量中涉及的物理过程进行建模,以及将物理先验信息编码为随机偏微分方程(SPDE)形式的回归模型。我们还将说明该理论在模拟应用中的实际适用性。

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