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Sequential Designs Based on Bayesian Uncertainty Quantification in Sparse Representation Surrogate Modeling

机译:基于贝叶斯不确定性量化在稀疏表示替代代理造型中的顺序设计

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摘要

A numerical method, called overcomplete basis surrogate method (OBSM), was recently proposed, which employs overcomplete basis functions to achieve sparse representations. While the method can handle nonstationary response without the need of inverting large covariance matrices, it lacks the capability to quantify uncertainty in predictions. We address this issue by proposing a Bayesian approach that first imposes a normal prior on the large space of linear coefficients, then applies the Markov chain Monte Carlo (MCMC) algorithm to generate posterior samples for predictions. From these samples, Bayesian credible intervals can then be obtained to assess prediction uncertainty. A key application for the proposed method is the efficient construction of sequential designs. Several sequential design procedures with different infill criteria are proposed based on the generated posterior samples. Numerical studies show that the proposed schemes are capable of solving problems of positive point identification, optimization, and surrogate fitting.
机译:最近提出了一种称为超常代理方法(OBSM)的数值方法,该方法采用过度计算的基础函数来实现稀疏表示。虽然该方法可以在不需要反转大型协方差矩阵的情况下处理非间断响应,但是它缺乏量化预测中不确定性的能力。我们通过提出贝叶斯方法来解决这个问题,首先在线性系​​数的大空间上提出正常的方法,然后应用马尔可夫链蒙特卡罗(MCMC)算法以产生预测的后样品。从这些样品中,可以获得贝叶斯可信间隔以评估预测不确定性。提出方法的关键申请是顺序设计的有效构造。基于所产生的后样品提出了具有不同填写标准的几种顺序设计过程。数值研究表明,该方案能够解决积极点识别,优化和代理配件的问题。

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