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Small Sample Bayesian Designs for Complex High-Dimensional Models Based on Information Gained Using Fast Approximations

机译:基于快速逼近信息的复杂高维模型小样本贝叶斯设计

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摘要

We consider the problem of designing for complex high-dimensional computer models that can be evaluated at different levels of accuracy. Ordinarily, this requires performing many expensive evaluations of the most accurate version of the computer model to obtain a reasonable coverage of the design space. In some cases, it is possible to supplement the information from the accurate model evaluations with a large number of evaluations of a cheap, approximate version of the computer model to enable a more informed design choice. We describe an approach that combines the information from both the approximate model and the accurate model into a single multiscale emulator for the computer model. We then propose a design strategy for selecting a small number of expensive evaluations of the accurate computer model based on our multiscale emulator and a decomposition of the input parameter space. We illustrate our methodology with an example concerning a computer simulation of a hydrocarbon reservoir.
机译:我们考虑了设计复杂的高维计算机模型的问题,这些模型可以在不同的准确性级别上进行评估。通常,这需要对计算机模型的最准确版本执行许多昂贵的评估,以获得合理的设计空间覆盖范围。在某些情况下,可以用大量廉价,近似版本的计算机模型评估来补充来自准确模型评估的信息,以实现更明智的设计选择。我们描述了一种将近似模型和精确模型中的信息组合到计算机模型的单个多尺度仿真器中的方法。然后,我们提出一种设计策略,用于基于我们的多尺度仿真器和输入参数空间的分解,选择少量昂贵的对准确计算机模型的评估。我们以一个关于油气藏计算机模拟的例子来说明我们的方法。

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