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Probabilistic Iterative Methods for Linear Systems

23 December 2020
Jon Cockayne
Ilse C. F. Ipsen
Chris J. Oates
T. W. Reid
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Abstract

This paper presents a probabilistic perspective on iterative methods for approximating the solution x∗∈Rd\mathbf{x}_* \in \mathbb{R}^dx∗​∈Rd of a nonsingular linear system Ax∗=b\mathbf{A} \mathbf{x}_* = \mathbf{b}Ax∗​=b. In the approach a standard iterative method on Rd\mathbb{R}^dRd is lifted to act on the space of probability distributions P(Rd)\mathcal{P}(\mathbb{R}^d)P(Rd). Classically, an iterative method produces a sequence xm\mathbf{x}_mxm​ of approximations that converge to x∗\mathbf{x}_*x∗​. The output of the iterative methods proposed in this paper is, instead, a sequence of probability distributions μm∈P(Rd)\mu_m \in \mathcal{P}(\mathbb{R}^d)μm​∈P(Rd). The distributional output both provides a "best guess" for x∗\mathbf{x}_*x∗​, for example as the mean of μm\mu_mμm​, and also probabilistic uncertainty quantification for the value of x∗\mathbf{x}_*x∗​ when it has not been exactly determined. Theoretical analysis is provided in the prototypical case of a stationary linear iterative method. In this setting we characterise both the rate of contraction of μm\mu_mμm​ to an atomic measure on x∗\mathbf{x}_*x∗​ and the nature of the uncertainty quantification being provided. We conclude with an empirical illustration that highlights the insight into solution uncertainty that can be provided by probabilistic iterative methods.

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