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Hessian-based adaptive sparse quadrature for infinite-dimensional Bayesian inverse problems

机译:无限维贝叶斯逆问题的基于Hessian的自适应稀疏正交

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In this work we propose and analyze a Hessian-based adaptive sparse quadrature to compute infinite-dimensional integrals with respect to the posterior distribution in the context of Bayesian inverse problems with Gaussian prior. Due to the concentration of the posterior distribution in the domain of the prior distribution, a prior-based parametrization and sparse quadrature may fail to capture the posterior distribution and lead to erroneous evaluation results. By using a parametrization based on the Hessian of the negative log-posterior, the adaptive sparse quadrature can effectively allocate the quadrature points according to the posterior distribution. A dimension-independent convergence rate of the proposed method is established under certain assumptions on the Gaussian prior and the integrands. Dimension-independent and faster convergence than O(N-1/2) is demonstrated for a linear as well as a nonlinear inverse problem whose posterior distribution can be effectively approximated by a Gaussian distribution at the MAP point. Published by Elsevier B.V.
机译:在这项工作中,我们提出并分析了一个基于Hessian的自适应稀疏正交函数,以在高斯先验的贝叶斯逆问题的背景下计算关于后验分布的无穷维积分。由于后验分布集中在先验分布的域中,因此基于先验的参数化和稀疏正交可能无法捕获后验分布并导致错误的评估结果。通过使用基于负对数后验的Hessian的参数化,自适应稀疏正交可以根据后验分布有效地分配正交点。在高斯先验和被积数的某些假设下,确定了该方法的维数收敛速度。对于线性和非线性逆问题,都证明了尺寸无关和比O(N-1 / 2)更快的收敛性,该问题的后验分布可以通过MAP点处的高斯分布有效地近似。由Elsevier B.V.发布

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