论文标题

基于模型反演和仿真的回归基于回归的深刻意义采样

Deep Importance Sampling based on Regression for Model Inversion and Emulation

论文作者

Llorente, F., Martino, L., Delgado, D., Camps-Valls, G.

论文摘要

通过向前和反向建模理解系统是许多科学和工程领域的研究的反复主题。在这种情况下,蒙特卡洛方法已被广泛用作数值推理和优化的强大工具。他们需要选择适合其性能至关重要的合适提案密度。因此,文献中提出了几种自适应意义采样(AIS)方案。我们在这里提出了一个AIS框架,称为基于回归的自适应深度重要性采样(RADIS)。在RADIS中,关键思想是通过回归非参数建议密度(即模拟器)的自适应结构,该密度模拟了后验分布,从而最大程度地减少了建议密度和目标密度之间的不匹配。 radis基于两个(或更多)嵌套的深度结构是方案,以便从构造的模拟器中绘制样品。该算法效率高,因为使用后近似作为提案密度,可以改善增加支持点。因此,雷迪在轻度条件下渐近地收敛到精确的采样器。此外,雷迪斯产生的仿真器又可以用作进一步研究的廉价替代模型。我们介绍了使用高斯过程(GP)和最近的邻居(NN)来构建模拟器的两个特定的雷达实现。几个数值实验和比较显示了提出的方案的好处。遥感模型反转和仿真中的现实应用程序证实了该方法的有效性。

Understanding systems by forward and inverse modeling is a recurrent topic of research in many domains of science and engineering. In this context, Monte Carlo methods have been widely used as powerful tools for numerical inference and optimization. They require the choice of a suitable proposal density that is crucial for their performance. For this reason, several adaptive importance sampling (AIS) schemes have been proposed in the literature. We here present an AIS framework called Regression-based Adaptive Deep Importance Sampling (RADIS). In RADIS, the key idea is the adaptive construction via regression of a non-parametric proposal density (i.e., an emulator), which mimics the posterior distribution and hence minimizes the mismatch between proposal and target densities. RADIS is based on a deep architecture of two (or more) nested IS schemes, in order to draw samples from the constructed emulator. The algorithm is highly efficient since employs the posterior approximation as proposal density, which can be improved adding more support points. As a consequence, RADIS asymptotically converges to an exact sampler under mild conditions. Additionally, the emulator produced by RADIS can be in turn used as a cheap surrogate model for further studies. We introduce two specific RADIS implementations that use Gaussian Processes (GPs) and Nearest Neighbors (NN) for constructing the emulator. Several numerical experiments and comparisons show the benefits of the proposed schemes. A real-world application in remote sensing model inversion and emulation confirms the validity of the approach.

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