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Gaussian Process Single-Index Models as Emulators for Computer Experiments

机译:高斯过程单索引模型作为计算机实验的仿真器

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摘要

A single-index model (SIM) provides for parsimonious multidimensional nonlinear regression by combining parametric (linear) projection with univariate nonparametric (nonlinear) regression models. We show that a particular Gaussian process (GP) formulation is simple to work with and ideal as an emulator for some types of computer experiment as it can outperform the canonical separable GP regression model commonly used in this setting. Our contribution focuses on drastically simplifying, reinterpreting, and then generalizing a recently proposed fully Bayesian GP-SIM combination. Favorable performance is illustrated on synthetic data and a real-data computer experiment. Two R packages, both released on CRAN, have been augmented to facilitate inference under our proposed model(s).
机译:单指标模型(SIM)通过将参数(线性)投影与单变量非参数(非线性)回归模型相结合,提供了简约的多维非线性回归。我们表明,特定的高斯过程(GP)公式易于使用,并且对于某些类型的计算机实验而言,它是理想的仿真器,因为它的性能优于在这种情况下常用的规范可分离GP回归模型。我们的贡献集中于大大简化,重新解释和推广最近提出的完全贝叶斯GP-SIM组合。综合数据和实际数据计算机实验显示了良好的性能。两个R软件包(均在CRAN上发布)已得到增强,以便于在我们提出的模型下进行推理。

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