Collocation approximation by deep neural ReLU networks for parametric and stochastic PDEs with lognormal inputs

IF 0.8 4区 数学 Q2 MATHEMATICS
Dung Dinh
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引用次数: 3

Abstract

We find the convergence rates of the collocation approximation by deep ReLU neural networks of solutions to elliptic PDEs with lognormal inputs, parametrized by $\boldsymbol{y}$ in the noncompact set ${\mathbb R}^\infty$. The approximation error is measured in the norm of the Bochner space $L_2({\mathbb R}^\infty, V, \gamma)$, where $\gamma$ is the infinite tensor-product standard Gaussian probability measure on ${\mathbb R}^\infty$ and $V$ is the energy space. We also obtain similar dimension-independent results in the case when the lognormal inputs are parametrized by ${\mathbb R}^M$ of very large dimension $M$, and the approximation error is measured in the $\sqrt{g_M}$-weighted uniform norm of the Bochner space $L_\infty^{\sqrt{g}}({\mathbb R}^M, V)$, where $g_M$ is the density function of the standard Gaussian probability measure on ${\mathbb R}^M$. Bibliography: 62 titles.
对数正态输入的参数和随机偏微分方程的深度神经ReLU网络配置逼近
在非紧集${\mathbb R}^\infty$中,我们得到了具有对数正态输入的椭圆偏微分方程(参数化为$\boldsymbol{y}$)的深度ReLU神经网络的配置近似的收敛速率。近似误差在Bochner空间$L_2({\mathbb R}^\infty, V, \gamma)$范数中测量,其中$\gamma$是${\mathbb R}^\infty$上的无限张量积标准高斯概率测度,$V$是能量空间。当对数正态输入被非常大的维度${\mathbb R}^M$参数化$M$时,我们也得到了类似的维度无关的结果,并且在Bochner空间$L_\infty^{\sqrt{g}}({\mathbb R}^M, V)$的$\sqrt{g_M}$加权均匀范数中测量近似误差,其中$g_M$是${\mathbb R}^M$上标准高斯概率度量的密度函数。参考书目:62种。
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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来源期刊
Sbornik Mathematics
Sbornik Mathematics 数学-数学
CiteScore
1.40
自引率
12.50%
发文量
37
审稿时长
6-12 weeks
期刊介绍: The Russian original is rigorously refereed in Russia and the translations are carefully scrutinised and edited by the London Mathematical Society. The journal has always maintained the highest scientific level in a wide area of mathematics with special attention to current developments in: Mathematical analysis Ordinary differential equations Partial differential equations Mathematical physics Geometry Algebra Functional analysis
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