具有非全局 Lipschitz 系数的半线性 SDE 不变量的线性隐含近似值

IF 1.8 2区 数学 Q1 MATHEMATICS Journal of Complexity Pub Date : 2024-03-13 DOI:10.1016/j.jco.2024.101842
Chenxu Pang , Xiaojie Wang , Yue Wu
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引用次数: 0

摘要

本文研究了半线性随机微分方程(SDE)在非全局 Lipschitz 系数条件下的弱逼近不变度量。为此,我们提出了线性-θ-投影欧拉(LTPE)方案,该方案也承认不变度量,以处理线性刚度的潜在影响。在某些假设条件下,SDE 和相应的 LTPE 方法都能分别以指数方式收敛到底层不变度量。此外,通过对相应的 Kolmogorov 方程进行与时间无关的正则性估计,可以保证数值不变度量与原始不变度量之间的微弱误差为一阶收敛。就计算复杂性而言,与文献中的保遍历隐式欧拉法相比,所提出的明确处理非线性的保遍历方案具有显著优势。我们提供了数值实验来验证我们的理论发现。
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Linear implicit approximations of invariant measures of semi-linear SDEs with non-globally Lipschitz coefficients

This article investigates the weak approximation towards the invariant measure of semi-linear stochastic differential equations (SDEs) under non-globally Lipschitz coefficients. For this purpose, we propose a linear-theta-projected Euler (LTPE) scheme, which also admits an invariant measure, to handle the potential influence of the linear stiffness. Under certain assumptions, both the SDE and the corresponding LTPE method are shown to converge exponentially to the underlying invariant measures, respectively. Moreover, with time-independent regularity estimates for the corresponding Kolmogorov equation, the weak error between the numerical invariant measure and the original one can be guaranteed with convergence of order one. In terms of computational complexity, the proposed ergodicity preserving scheme with the nonlinearity explicitly treated has a significant advantage over the ergodicity preserving implicit Euler method in the literature. Numerical experiments are provided to verify our theoretical findings.

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来源期刊
Journal of Complexity
Journal of Complexity 工程技术-计算机:理论方法
CiteScore
3.10
自引率
17.60%
发文量
57
审稿时长
>12 weeks
期刊介绍: The multidisciplinary Journal of Complexity publishes original research papers that contain substantial mathematical results on complexity as broadly conceived. Outstanding review papers will also be published. In the area of computational complexity, the focus is on complexity over the reals, with the emphasis on lower bounds and optimal algorithms. The Journal of Complexity also publishes articles that provide major new algorithms or make important progress on upper bounds. Other models of computation, such as the Turing machine model, are also of interest. Computational complexity results in a wide variety of areas are solicited. Areas Include: • Approximation theory • Biomedical computing • Compressed computing and sensing • Computational finance • Computational number theory • Computational stochastics • Control theory • Cryptography • Design of experiments • Differential equations • Discrete problems • Distributed and parallel computation • High and infinite-dimensional problems • Information-based complexity • Inverse and ill-posed problems • Machine learning • Markov chain Monte Carlo • Monte Carlo and quasi-Monte Carlo • Multivariate integration and approximation • Noisy data • Nonlinear and algebraic equations • Numerical analysis • Operator equations • Optimization • Quantum computing • Scientific computation • Tractability of multivariate problems • Vision and image understanding.
期刊最新文献
Stefan Heinrich is the Winner of the 2024 Best Paper Award of the Journal of Complexity Best Paper Award of the Journal of Complexity Matthieu Dolbeault is the winner of the 2024 Joseph F. Traub Information-Based Complexity Young Researcher Award Optimal recovery of linear operators from information of random functions Intractability results for integration in tensor product spaces
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