大规模线性反问题超参数估计的有效迭代方法

IF 1.7 3区 数学 Q2 MATHEMATICS, APPLIED
Khalil A. Hall-Hooper, Arvind K. Saibaba, Julianne Chung, Scot M. Miller
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引用次数: 0

摘要

我们研究了大规模线性逆问题的贝叶斯方法,重点研究了超参数估计这一具有挑战性的任务。遵循马尔可夫链蒙特卡罗方法的典型层次贝叶斯公式对于小问题是可能的,但对于具有大量未知逆参数的问题在计算上是不可行的。在这项工作中,我们描述了一种经验贝叶斯(EB)方法来估计最大化边际后验的超参数,即数据条件下超参数的概率密度,然后我们使用估计的超参数来计算未知逆参数的后验。对于无法计算先验协方差矩阵的平方根和逆的问题,我们描述了一种基于广义Golub-Kahan双对角化的方法来近似边际后验,并寻求使近似边际后验最小的超参数。地震和大气层析成像的数值结果证明了该方法的准确性、鲁棒性和潜在的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient iterative methods for hyperparameter estimation in large-scale linear inverse problems

We study Bayesian methods for large-scale linear inverse problems, focusing on the challenging task of hyperparameter estimation. Typical hierarchical Bayesian formulations that follow a Markov Chain Monte Carlo approach are possible for small problems but are not computationally feasible for problems with a very large number of unknown inverse parameters. In this work, we describe an empirical Bayes (EB) method to estimate hyperparameters that maximize the marginal posterior, i.e., the probability density of the hyperparameters conditioned on the data, and then we use the estimated hyperparameters to compute the posterior of the unknown inverse parameters. For problems where the computation of the square root and inverse of prior covariance matrices are not feasible, we describe an approach based on the generalized Golub-Kahan bidiagonalization to approximate the marginal posterior and seek hyperparameters that minimize the approximate marginal posterior. Numerical results from seismic and atmospheric tomography demonstrate the accuracy, robustness, and potential benefits of the proposed approach.

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来源期刊
CiteScore
3.00
自引率
5.90%
发文量
68
审稿时长
3 months
期刊介绍: Advances in Computational Mathematics publishes high quality, accessible and original articles at the forefront of computational and applied mathematics, with a clear potential for impact across the sciences. The journal emphasizes three core areas: approximation theory and computational geometry; numerical analysis, modelling and simulation; imaging, signal processing and data analysis. This journal welcomes papers that are accessible to a broad audience in the mathematical sciences and that show either an advance in computational methodology or a novel scientific application area, or both. Methods papers should rely on rigorous analysis and/or convincing numerical studies.
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