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Bayesian Monte Carlo for the Global Optimization of Expensive Functions

机译:贝叶斯蒙特卡洛全球优化昂贵的功能

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In the last decades enormous advances have been made possible for modelling complex (physical) systems by mathematical equations and computer algorithms. To deal with very long running times of such models a promising approach has been to replace them by stochastic approximations based on a few model evaluations. In this paper we focus on the often occuring case that the system modelled has two types of inputs x = (x_c, x_e) with x_c representing control variables and x_e representing environmental variables. Typically, x_c needs to be optimised, whereas x_e are uncontrollable but are assumed to adhere to some distribution. In this paper we use a Bayesian approach to address this problem: we specify a prior distribution on the underlying function using a Gaussian process and use Bayesian Monte Carlo to obtain the objective function by integrating out environmental variables. Furthermore, we empirically evaluate several active learning criteria that were developed for the deterministic case (i.e., no environmental variables) and show that the ALC criterion appears significantly better than expected improvement and random selection.
机译:在过去的几十年中,通过数学方程和计算机算法建模复杂(物理)系统,使得巨大进步。为了处理这些模型的很长一段时间,有希望的方法是根据一些模型评估通过随机近似替换它们。在本文中,我们专注于经常发生的情况,系统建模的系统具有两种类型的输入x =(x_c,x_e),其中x_c表示表示环境变量的控制变量和x_e。通常,X_C需要优化,而X_E是无法控制的,但假设粘附到一些分发。在本文中,我们使用贝叶斯方法来解决这个问题:我们使用高斯过程指定基础函数的先前分配,并使用贝叶斯蒙特卡罗来通过整合环境变量来获得目标函数。此外,我们经验评估了为确定性案例(即,没有环境变量)开发的若干积极学习标准,并表明ALC标准显得明显优于预期的改进和随机选择。

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