Randomized Maximum Likelihood (RML) is an approximate posterior sampling methodology, widely used in Bayesian inverse problems with complex forward models, particularly in petroleum engineering applications. The procedure involves solving a multi-objective optimization problem, which can be challenging in high-dimensions and when there are constraints on computational costs. We propose a new methodology for tackling the RML optimization problem based on the high-dimensional Bayesian optimization literature. By sharing data between the different objective functions, we are able to implement RML at a greatly reduced computational cost. We demonstrate the benefits of our methodology in comparison with the solutions obtained by alternative optimization methods on a variety of synthetic and real-world problems, including medical and fluid dynamics applications. Furthermore, we show that the samples produced by our method cover well the high-posterior density regions in all of the experiments.
翻译:最大可能性(RML)是一种近似后方取样方法,广泛用于巴伊西亚的复杂前方模型的反向问题,特别是在石油工程应用中。该程序涉及解决一个多目标优化问题,在高分层和计算成本受限时,可能具有挑战性。我们根据高位贝伊西亚优化文献提出了解决RML优化问题的新方法。通过在不同目标功能之间共享数据,我们得以以大大降低的计算成本实施RML。我们展示了我们的方法与替代优化方法就各种合成和现实世界问题(包括医疗和液体动态应用)获得的解决方案相比的好处。此外,我们展示了我们方法产生的样本覆盖了所有实验的高端密度区域。