受随机优化方法启发的随机算子分割方案

IF 2.1 2区 数学 Q1 MATHEMATICS, APPLIED
Monika Eisenmann, Tony Stillfjord
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引用次数: 0

摘要

在本文中,我们将抽象演化方程的算子拆分方法与大规模优化问题的随机方法相结合。这种结合产生了一种随机拆分方案,它在给定的时间步中不一定使用拆分算子的所有部分。这与确定性拆分方案形成了鲜明对比,后者总是至少使用每个部分一次,甚至多次。因此,与这类方法相比,计算成本可以大大降低。我们在抽象环境中严格定义了随机算子拆分方案,并提供了误差分析,证明该方案的时间收敛阶数至少为 1/2。我们使用随机域分解方法,通过线性和准线性扩散问题的数值实验来说明该理论。我们得出的结论是,以某些方式选择随机化可将阶次提高到 1。这与对整个问题应用后向(隐式)欧拉等方法一样精确,而无需拆分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A randomized operator splitting scheme inspired by stochastic optimization methods

A randomized operator splitting scheme inspired by stochastic optimization methods

In this paper, we combine the operator splitting methodology for abstract evolution equations with that of stochastic methods for large-scale optimization problems. The combination results in a randomized splitting scheme, which in a given time step does not necessarily use all the parts of the split operator. This is in contrast to deterministic splitting schemes which always use every part at least once, and often several times. As a result, the computational cost can be significantly decreased in comparison to such methods. We rigorously define a randomized operator splitting scheme in an abstract setting and provide an error analysis where we prove that the temporal convergence order of the scheme is at least 1/2. We illustrate the theory by numerical experiments on both linear and quasilinear diffusion problems, using a randomized domain decomposition approach. We conclude that choosing the randomization in certain ways may improve the order to 1. This is as accurate as applying e.g. backward (implicit) Euler to the full problem, without splitting.

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来源期刊
Numerische Mathematik
Numerische Mathematik 数学-应用数学
CiteScore
4.10
自引率
4.80%
发文量
72
审稿时长
6-12 weeks
期刊介绍: Numerische Mathematik publishes papers of the very highest quality presenting significantly new and important developments in all areas of Numerical Analysis. "Numerical Analysis" is here understood in its most general sense, as that part of Mathematics that covers: 1. The conception and mathematical analysis of efficient numerical schemes actually used on computers (the "core" of Numerical Analysis) 2. Optimization and Control Theory 3. Mathematical Modeling 4. The mathematical aspects of Scientific Computing
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