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Evaluating Gaussian process metamodels and sequential designs for noisy level set estimation

机译:评估高斯过程元模型和噪声水平集估计顺序设计

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We consider the problem of learning the level set for which a noisy black-box function exceeds a given threshold. To efficiently reconstruct the level set, we investigate Gaussian process (GP) metamodels. Our focus is on strongly stochastic simulators, in particular with heavy-tailed simulation noise and low signal-to-noise ratio. To guard against noise misspecification, we assess the performance of three variants: (i) GPs with Student-t observations; (ii) Student-t processes (TPs); and (iii) classification GPs modeling the sign of the response. In conjunction with these metamodels, we analyze several acquisition functions for guiding the sequential experimental designs, extending existing stepwise uncertainty reduction criteria to the stochastic contour-finding context. This also motivates our development of (approximate) updating formulas to efficiently compute such acquisition functions. Our schemes are benchmarked by using a variety of synthetic experiments in 1-6 dimensions. We also consider an application of level set estimation for determining the optimal exercise policy of Bermudan options in finance.
机译:我们考虑学习嘈杂黑盒功能超过给定阈值的级别集的问题。为了有效地重建水平集,我们调查高斯过程(GP)元模型。我们的重点是在强烈的随机模拟器上,特别是具有重型模拟噪声和低信噪比。为了防止噪声误操作,我们评估了三种变体的性能:(i)具有学生-T观察的GPS; (ii)学生-T进程(TPS); (iii)对响应符号的分类GPS。结合这些元典,我们分析了几种采集功能,用于引导顺序实验设计,将现有的逐步不确定性降低标准延伸到随机等高发现背景。这也激发了我们的开发(近似)更新公式,以有效地计算这种采集函数。我们的计划是通过使用1-6维度的各种合成实验进行基准测试。我们还考虑级别设定估计的应用,以确定金融中百慕大选项的最佳运动政策。

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