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Adaptive hessian-based nonstationary gaussian process response surface method for probability density approximation with application to bayesian solution of large-scale inverse problems

机译:概率密度近似的基于自适应粗体的非平稳高斯过程响应面方法及其在大规模逆问题贝叶斯解中的应用

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摘要

We develop an adaptive Hessian-based non-stationary Gaussian process (GP) response surface method for approximating a probability density function (pdf) that exploits its structure, particularly the Hessian of its negative logarithm. Of particular interest to us are pdfs that arise from the Bayesian solution of large-scale inverse problems, which imply very expensive-to-evaluate pdfs. The method can be considered as a piecewise adaptive Gaussian approximation in which a Gaussian tailored to the local Hessian of the negative log probability density is constructed for each subregion in high dimensional parameter space. The task of efficiently partitioning the parameter space into subregions is done implicitly through Hessian-informed membership probability functions. The GP machinery is then employed to glue all local Gaussian approximations into a global analytical response surface that is far cheaper to evaluate than the original expensive probability density. The resulting response surface is also equipped with an analytical variance estimate that can be used to assess the uncertainty of the approximation. One of the key components of our proposed approach is an adaptive sampling strategy for exploring the parameter space efficiently during the computer experimental design step, which aims to find training points with high probability density. The detailed construction and an analysis of the method are presented. We then demonstrate the accuracy and efficiency of the proposed method on several example problems, including inverse shape electromagnetic scattering in 24-dimensional parameter space.
机译:我们开发了一种自适应的基于Hessian的非平稳高斯过程(GP)响应面方法,用于近似利用其结构,特别是其负对数的Hessian的概率密度函数(pdf)。我们特别感兴趣的是由大规模逆问题的贝叶斯解决方案产生的pdf,这意味着评估pdf非常昂贵。该方法可以看作是分段自适应高斯近似,其中针对高维参数空间中的每个子区域构造适合于负对数概率密度的局部Hessian的高斯。有效地将参数空间划分为子区域的任务是通过Hessian告知的隶属概率函数隐式完成的。然后使用GP机械将所有局部高斯近似值粘贴到一个全局分析响应曲面中,该曲面比原始昂贵的概率密度要便宜得多。所得的响应面还配备了可用于评估近似不确定性的分析方差估计值。我们提出的方法的关键组成部分之一是一种自适应采样策略,可以在计算机实验设计步骤中有效地探索参数空间,目的是找到具有高概率密度的训练点。介绍了该方法的详细构造和分析。然后,我们在几个示例问题上证明了该方法的准确性和效率,这些问题包括在24维参数空间中的逆形状电磁散射。

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