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首页> 外文期刊>Statistica Sinica >SEQUENTIAL DESIGN OF EXPERIMENTS FOR ESTIMATING QUANTILES OF BLACK-BOX FUNCTIONS
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SEQUENTIAL DESIGN OF EXPERIMENTS FOR ESTIMATING QUANTILES OF BLACK-BOX FUNCTIONS

机译:估算黑盒功能量数的实验的顺序设计

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摘要

Estimating quantiles of black-box deterministic functions with random inputs is a challenging task when the number of function evaluations is severely restricted, which is typical for computer experiments. This article proposes two new sequential Bayesian methods for quantile estimation based on the Gaussian process metamodel. Both rely on the Stepwise Uncertainty Reduction paradigm, hence aim at providing a sequence of function evaluations that reduces an uncertainty measure associated with the quantile estimator. The proposed strategies are tested on several numerical examples, showing that accurate estimators can be obtained using only a small number of function evaluations.
机译:当函数评估的数量严重限制时,随机输入估计具有随机输入的黑匣子确定功能的量级是一个具有挑战性的任务,这对于计算机实验是典型的。 本文提出了两种基于高斯过程元模型的定量估计的两种新的连续贝叶斯方法。 依赖于逐步不确定性降低范例,因此目的地提供一系列函数评估,该函数评估序列减少了与定量估计器相关的不确定性度量。 拟议的策略在几个数值示例上进行了测试,示出了只能使用少量函数评估获得准确的估计器。

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