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COMPOSITE GAUSSIAN PROCESS MODELS FOR EMULATING EXPENSIVE FUNCTIONS~1

机译:高斯函数的复合高斯过程模型〜1

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摘要

A new type of nonstationary Gaussian process model is developed for approximating computationally expensive functions. The new model is a composite of two Gaussian processes, where the first one captures the smooth global trend and the second one models local details. The new predictor also incorporates a flexible variance model, which makes it more capable of approximating surfaces with varying volatility. Compared to the commonly used stationary Gaussian process model, the new predictor is numerically more stable and can more accurately approximate complex surfaces when the experimental design is sparse. In addition, the new model can also improve the prediction intervals by quantifying the change of local variability associated with the response. Advantages of the new predictor are demonstrated using several examples.
机译:开发了一种新型的非平稳高斯过程模型,用于近似计算上昂贵的函数。新模型是两个高斯过程的组合,其中第一个过程捕获了平滑的全球趋势,第二个过程则模拟了局部细节。新的预测器还合并了一个灵活的方差模型,这使它更能够近似具有变化的波动性的曲面。与常用的平稳高斯过程模型相比,新的预测器在数值上更稳定,并且在实验设计稀疏时可以更精确地近似复杂曲面。此外,新模型还可以通过量化与响应相关的局部可变性的变化来改善预测间隔。使用几个示例说明了新预测变量的优点。

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