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An Informational Approach to the Global Optimization of Expensive-to-evaluate Functions

机译:一种昂贵的评估函数全局优化的信息方法

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In many global optimization problems motivated by engineering applications, the number of function evaluations is severely limited by time or cost. To ensure that each evaluation contributes to the localization of good candidates for the role of global minimizer, a sequential choice of evaluation points is usually carried out. In particular, when Kriging is used to interpolate past evaluations, the uncertainty associated with the lack of information on the function can be expressed and used to compute a number of criteria accounting for the interest of an additional evaluation at any given point. This paper introduces minimizers entropy as a new Kriging-based criterion for the sequential choice of points at which the function should be evaluated. Based on stepwise uncertainty reduction, it accounts for the informational gain on the minimizer expected from a new evaluation. The criterion is approximated using conditional simulations of the Gaussian process model behind Kriging, and then inserted into an algorithm similar in spirit to the Efficient Global Optimization (EGO) algorithm. An empirical comparison is carried out between our criterion and expected improvement, one of the reference criteria in the literature. Experimental results indicate major evaluation savings over EGO. Finally, the method, which we call IAGO (for Informational Approach to Global Optimization), is extended to robust optimization problems, where both the factors to be tuned and the function evaluations are corrupted by noise.
机译:在工程应用引起的许多全局优化问题中,功能评估的数量受到时间或成本的严重限制。为确保每次评估都有助于为全局最小化器的作用定位良好的候选者,通常会按顺序选择评估点。特别是,当使用克里格插值法对过去的评估进行插值时,可以表达与功能信息不足相关的不确定性,并将其用于计算许多标准,以考虑在任何给定点进行附加评估的兴趣。本文介绍了最小化熵,这是一种新的基于Kriging的准则,用于顺序选择应评估函数的点。基于逐步减少不确定性,它考虑了新评估期望的最小化器的信息增益。使用Kriging背后的高斯过程模型的条件模拟来近似该标准,然后将其插入到本质上与高效全局优化(EGO)算法相似的算法中。我们的标准和预期的改进(文献中的参考标准之一)之间进行了实证比较。实验结果表明,与EGO相比,评估节省了很多。最后,我们称为IAGO(用于全局优化的信息方法)的方法扩展到了稳健的优化问题,在这些问题中,要调整的因素和功能评估都被噪声破坏了。

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