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Strong convergence rates of probabilistic integrators for ordinary differential equations

机译:常微分方程概率积分器的强收敛速度

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摘要

Probabilistic integration of a continuous dynamical system is a way of systematically introducing discretisation error, at scales no larger than errors introduced by standard numerical discretisation, in order to enable thorough exploration of possible responses of the system to inputs. It is thus a potentially useful approach in a number of applications such as forward uncertainty quantification, inverse problems, and data assimilation. We extend the convergence analysis of probabilistic integrators for deterministic ordinary differential equations, as proposed by Conrad et al. (Stat Comput 27(4):1065-1082, 2017. ), to establish mean-square convergence in the uniform norm on discrete- or continuous-time solutions under relaxed regularity assumptions on the driving vector fields and their induced flows. Specifically, we show that randomised high-order integrators for globally Lipschitz flows and randomised Euler integrators for dissipative vector fields with polynomially bounded local Lipschitz constants all have the same mean-square convergence rate as their deterministic counterparts, provided that the variance of the integration noise is not of higher order than the corresponding deterministic integrator. These and similar results are proven for probabilistic integrators where the random perturbations may be state-dependent, non-Gaussian, or non-centred random variables.
机译:连续动力系统的概率积分是一种系统地引入离散化误差的方法,其规模不大于标准数值离散化所引入的误差,以便能够全面探索系统对输入的可能响应。因此,在许多应用中,例如前向不确定性量化,反问题和数据同化,这是一种潜在有用的方法。正如Conrad等人提出的,我们将概率积分器的收敛性分析扩展到确定性常微分方程。 (Stat Comput 27(4):1065-1082,2017.),在驱动向量场及其感应流的松弛规律假设下,在离散或连续时间解的统一范数中建立均方收敛。具体而言,我们证明了全局Lipschitz流的随机高阶积分和耗散矢量场的随机Euler积分,其多项式有界的局部Lipschitz常数与确定性均值具有相同的均方收敛速度,但前提是积分噪声的方差不比相应的确定性积分器高。这些和类似的结果已被概率积分器证明,其中随机扰动可能是状态相关的,非高斯或非中心随机变量。

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