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On estimation of surrogate models for multivariate computer experiments

机译:论多元计算机实验代理模型的估计

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摘要

Estimation of surrogate models for computer experiments leads to nonparametric regression estimation problems without noise in the dependent variable. In this paper, we propose an empirical maximal deviation minimization principle to construct estimates in this context and analyze the rate of convergence of corresponding quantile estimates. As an application, we consider estimation of computer experiments with moderately high dimension by neural networks and show that here we can circumvent the so-called curse of dimensionality by imposing rather general assumptions on the structure of the regression function. The estimates are illustrated by applying them to simulated data and to a simulation model in mechanical engineering.
机译:计算机实验的代理模型的估计导致非参数回归估计问题,而没有噪声的噪声。 在本文中,我们提出了一种经验最大偏差最小化原理,在此背景下构建估计,分析了对应量化估计的收敛速率。 作为申请,我们考虑通过神经网络与中等高维度的计算机实验估算,并显示在这里,我们可以通过对回归函数的结构进行相当一般的假设来规避所谓的维度诅咒。 通过将它们应用于模拟数据和机械工程中的仿真模型来说明估计。

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