Probabilistic numerics casts numerical tasks, such the numerical solution of differential equations, as inference problems to be solved. One approach is to model the unknown quantity of interest as a random variable, and to constrain this variable using data generated during the course of a traditional numerical method. However, data may be nonlinearly related to the quantity of interest, rendering the proper conditioning of random variables difficult and limiting the range of numerical tasks that can be addressed. Instead, this paper proposes to construct probabilistic numerical methods based only on the final output from a traditional method. A convergent sequence of approximations to the quantity of interest constitute a dataset, from which the limiting quantity of interest can be extrapolated, in a probabilistic analogue of Richardson's deferred approach to the limit. This black box approach (1) massively expands the range of tasks to which probabilistic numerics can be applied, (2) inherits the features and performance of state-of-the-art numerical methods, and (3) enables provably higher orders of convergence to be achieved. Applications are presented for nonlinear ordinary and partial differential equations, as well as for eigenvalue problems-a setting for which no probabilistic numerical methods have yet been developed.
翻译:数字概率的概率性给数字任务带来数字任务,例如不同方程式的数值解决办法,作为有待解决的推论问题。一种办法是将未知利息数量作为随机变量来模拟,并利用传统数字方法过程中产生的数据来限制这一变量。然而,数据可能与利息数量没有线性关系,使随机变量的适当调节变得困难,并限制可以处理的数字任务范围。相反,本文件提议只根据传统方法的最终产出来构建概率性数字方法。利息数量的近似相构成数据集,从中可以推断限制利息的数量,从中可以推断出这种限制利息的数量,这是Richardson推迟处理的方法对限额的概率性模拟。这种黑箱办法(1) 大大扩大了可适用概率性数字任务的范围,(2) 继承了当前数字方法的特征和性能,(3) 使得能够实现可想象的更高程度的趋同顺序。应用的是非线性普通和局部性等价法,但对于数值来说,没有形成任何差异性数值,因此没有确定。