高维问题的无优化克里格模型组合

IF 1 4区 数学 Q3 STATISTICS & PROBABILITY Computational Statistics Pub Date : 2023-10-27 DOI:10.1007/s00180-023-01424-7
Tanguy Appriou, Didier Rullière, David Gaudrie
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引用次数: 0

摘要

Kriging元建模(也称为高斯过程回归)是一种基于少量观测值预测函数输出的流行方法。Kriging方法涉及长度尺度超参数,其优化对于获得准确的模型至关重要,通常使用最大似然估计(MLE)进行。然而,对于高维问题,超参数优化是有问题的,往往不能提供正确的值。这对于基于kriging的设计优化来说尤其如此,因为尺寸通常非常高。在本文中,我们提出了一种将Kriging子模型与随机选择的长度尺度相结合的方法来构建高维代理模型,从而避免了超参数优化。与其他方法不同的是,它不依赖于降维技术,它为模型提供了一个封闭的形式表达。我们提出了一种确定子模型长度尺度合适范围的方法。我们还比较了在组合中计算权重的不同方法。对于一个高维测试问题和一个实际应用,我们的组合比使用MLE的经典Kriging方法更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Combination of optimization-free kriging models for high-dimensional problems
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the output of a function based on few observations. The Kriging method involves length-scale hyperparameters whose optimization is essential to obtain an accurate model and is typically performed using maximum likelihood estimation (MLE). However, for high-dimensional problems, the hyperparameter optimization is problematic and often fails to provide correct values. This is especially true for Kriging-based design optimization where the dimension is often quite high. In this article, we propose a method for building high-dimensional surrogate models which avoids the hyperparameter optimization by combining Kriging sub-models with randomly chosen length-scales. Contrarily to other approaches, it does not rely on dimension reduction techniques and it provides a closed-form expression for the model. We present a recipe to determine a suitable range for the sub-models length-scales. We also compare different approaches to compute the weights in the combination. We show for a high-dimensional test problem and a real-world application that our combination is more accurate than the classical Kriging approach using MLE.
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来源期刊
Computational Statistics
Computational Statistics 数学-统计学与概率论
CiteScore
2.90
自引率
0.00%
发文量
122
审稿时长
>12 weeks
期刊介绍: Computational Statistics (CompStat) is an international journal which promotes the publication of applications and methodological research in the field of Computational Statistics. The focus of papers in CompStat is on the contribution to and influence of computing on statistics and vice versa. The journal provides a forum for computer scientists, mathematicians, and statisticians in a variety of fields of statistics such as biometrics, econometrics, data analysis, graphics, simulation, algorithms, knowledge based systems, and Bayesian computing. CompStat publishes hardware, software plus package reports.
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