从低阶回缩到动态低阶近似,再回到低阶近似。

IF 1.6 3区 数学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
BIT Numerical Mathematics Pub Date : 2024-01-01 Epub Date: 2024-06-17 DOI:10.1007/s10543-024-01028-7
Axel Séguin, Gianluca Ceruti, Daniel Kressner
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引用次数: 0

摘要

在求解受光滑流形约束的优化问题的算法中,回缩是一种行之有效的工具,可确保迭代保持在流形上。最近的研究表明,对于流形上的其他计算任务,包括插值任务,回撤也是一个有用的概念。在这项工作中,我们考虑将缩回应用于固定阶矩阵流形上微分方程的数值积分。这与动态低阶近似(DLRA)技术密切相关。事实上,任何回缩都会导致数值积分,反之亦然,某些 DLRA 技术与回缩有直接关系。作为后者的一个例子,我们介绍了一种新的回缩方法,称为 KLS 回缩,它是从所谓的 DLRA 非常规积分器中衍生出来的。我们还说明了如何利用回缩来恢复已知的 DLRA 技术和设计新技术。本研究特别介绍了两种适用于一般流形上微分方程的新型数值积分方案:加速前向欧拉(AFE)方法和投影拉尔斯顿-赫米特(PRH)方法。这两种方法都建立在缩回的基础上,将其作为逼近流形上曲线的工具。这两种方法被证明具有三阶的局部截断误差。经典 DLRA 例子的数值实验凸显了这些新方法的优势和不足。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

From low-rank retractions to dynamical low-rank approximation and back.

From low-rank retractions to dynamical low-rank approximation and back.

In algorithms for solving optimization problems constrained to a smooth manifold, retractions are a well-established tool to ensure that the iterates stay on the manifold. More recently, it has been demonstrated that retractions are a useful concept for other computational tasks on manifold as well, including interpolation tasks. In this work, we consider the application of retractions to the numerical integration of differential equations on fixed-rank matrix manifolds. This is closely related to dynamical low-rank approximation (DLRA) techniques. In fact, any retraction leads to a numerical integrator and, vice versa, certain DLRA techniques bear a direct relation with retractions. As an example for the latter, we introduce a new retraction, called KLS retraction, that is derived from the so-called unconventional integrator for DLRA. We also illustrate how retractions can be used to recover known DLRA techniques and to design new ones. In particular, this work introduces two novel numerical integration schemes that apply to differential equations on general manifolds: the accelerated forward Euler (AFE) method and the Projected Ralston-Hermite (PRH) method. Both methods build on retractions by using them as a tool for approximating curves on manifolds. The two methods are proven to have local truncation error of order three. Numerical experiments on classical DLRA examples highlight the advantages and shortcomings of these new methods.

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来源期刊
BIT Numerical Mathematics
BIT Numerical Mathematics 数学-计算机:软件工程
CiteScore
2.90
自引率
0.00%
发文量
38
审稿时长
6 months
期刊介绍: The journal BIT has been published since 1961. BIT publishes original research papers in the rapidly developing field of numerical analysis. The essential areas covered by BIT are development and analysis of numerical methods as well as the design and use of algorithms for scientific computing. Topics emphasized by BIT include numerical methods in approximation, linear algebra, and ordinary and partial differential equations.
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