响应概率分布随机场模型下目标导向自适应抽样

Ath'enais Gautier, D. Ginsbourger, G. Pirot
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引用次数: 3

摘要

在自然和人工复杂系统的研究中,不完全由所考虑的决策变量决定的响应通常是概率建模的,导致响应分布在决策空间中变化。我们考虑的情况是,这些响应分布的空间变化不仅涉及它们的平均值和/或方差,还涉及其他特征,例如形状或单模态与多模态。我们的贡献建立在非参数贝叶斯方法的基础上,以模拟由此引起的概率分布场,特别是逻辑高斯模型的空间扩展。所考虑的模型提供候选点响应分布的概率预测,例如允许执行概率密度函数的(近似)后验模拟,联合预测目标分布的多个矩和其他函数,以及量化收集新样本对感兴趣的分布领域的知识状态的影响。特别是,我们引入了自适应采样策略,利用所考虑的随机分布场模型的潜力,以面向目标的方式指导系统评估,以期从非线性(随机)反演和全局优化中简洁地解决校准和相关问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Goal-oriented adaptive sampling under random field modelling of response probability distributions
In the study of natural and artificial complex systems, responses that are not completely determined by the considered decision variables are commonly modelled probabilistically, resulting in response distributions varying across decision space. We consider cases where the spatial variation of these response distributions does not only concern their mean and/or variance but also other features including for instance shape or uni-modality versus multi-modality. Our contributions build upon a non-parametric Bayesian approach to modelling the thereby induced fields of probability distributions, and in particular to a spatial extension of the logistic Gaussian model. The considered models deliver probabilistic predictions of response distributions at candidate points, allowing for instance to perform (approximate) posterior simulations of probability density functions, to jointly predict multiple moments and other functionals of target distributions, as well as to quantify the impact of collecting new samples on the state of knowledge of the distribution field of interest. In particular, we introduce adaptive sampling strategies leveraging the potential of the considered random distribution field models to guide system evaluations in a goal-oriented way, with a view towards parsimoniously addressing calibration and related problems from non-linear (stochastic) inversion and global optimisation.
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