线性分布PDE约束下二阶随机场的特征

IF 1.5 2区 数学 Q2 STATISTICS & PROBABILITY Bernoulli Pub Date : 2023-01-17 DOI:10.3150/23-bej1588
Iain Henderson, P. Noble, O. Roustant
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引用次数: 3

摘要

设$L$是作用于开集$\mathcal{D}\子集\mathbb{R}^ D $上定义的函数的线性微分算子。在本文中,我们描述了可测量的二阶随机场$U = (U(x))_{x\ In \mathcal{D}}$,其样本路径都验证了偏微分方程(PDE) $L(U) = 0$,仅根据它们的前两个矩。与以往的类似结果相比,新颖之处在于,等式$L(u) = 0$被理解为分布的意义,这是一个功能强大的泛函分析框架,主要用于研究线性偏微分方程。这个框架能够将$(U(x))_{x\in\mathcal{D}}$的前两个矩以及它的样本路径上所需的可微性假设减少到最小,以便使PDE $L(U_{\omega})=0$有意义。针对高斯过程回归(GPR)的应用,我们证明了当$(U(x))_{x\ In \mathcal{D}}$是高斯过程(GP)时,$(U(x))_{x\ In \mathcal{D}}$的样本路径在点向观测条件下仍然在分布意义上验证了约束$L(U)=0$。最后,我们推导了一个简单但具有指导意义的例子,即三维线性波动方程的GP模型,对于这个模型,我们的定理是适用的,而以前的文献结果一般不适用。
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Characterization of the second order random fields subject to linear distributional PDE constraints
Let $L$ be a linear differential operator acting on functions defined over an open set $\mathcal{D}\subset \mathbb{R}^d$. In this article, we characterize the measurable second order random fields $U = (U(x))_{x\in\mathcal{D}}$ whose sample paths all verify the partial differential equation (PDE) $L(u) = 0$, solely in terms of their first two moments. When compared to previous similar results, the novelty lies in that the equality $L(u) = 0$ is understood in the sense of distributions, which is a powerful functional analysis framework mostly designed to study linear PDEs. This framework enables to reduce to the minimum the required differentiability assumptions over the first two moments of $(U(x))_{x\in\mathcal{D}}$ as well as over its sample paths in order to make sense of the PDE $L(U_{\omega})=0$. In view of Gaussian process regression (GPR) applications, we show that when $(U(x))_{x\in\mathcal{D}}$ is a Gaussian process (GP), the sample paths of $(U(x))_{x\in\mathcal{D}}$ conditioned on pointwise observations still verify the constraint $L(u)=0$ in the distributional sense. We finish by deriving a simple but instructive example, a GP model for the 3D linear wave equation, for which our theorem is applicable and where the previous results from the literature do not apply in general.
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来源期刊
Bernoulli
Bernoulli 数学-统计学与概率论
CiteScore
3.40
自引率
0.00%
发文量
116
审稿时长
6-12 weeks
期刊介绍: BERNOULLI is the journal of the Bernoulli Society for Mathematical Statistics and Probability, issued four times per year. The journal provides a comprehensive account of important developments in the fields of statistics and probability, offering an international forum for both theoretical and applied work. BERNOULLI will publish: Papers containing original and significant research contributions: with background, mathematical derivation and discussion of the results in suitable detail and, where appropriate, with discussion of interesting applications in relation to the methodology proposed. Papers of the following two types will also be considered for publication, provided they are judged to enhance the dissemination of research: Review papers which provide an integrated critical survey of some area of probability and statistics and discuss important recent developments. Scholarly written papers on some historical significant aspect of statistics and probability.
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