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Integrating hyper-parameter uncertainties in a multi-fidelity Bayesian model for the estimation of a probability of failure

机译:在多保真贝叶斯模型中集成超参数不确定性,以估计失败概率

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A multi-fidelity simulator is a numerical model, in which one of the inputs controls a trade-off between the realism and the computational cost of the simulation. Our goal is to estimate the probability of exceeding a given threshold on a multi-fidelity stochastic simulator. We propose a fully Bayesian approach based on Gaussian processes to compute the posterior probability distribution of this probability. We pay special attention to the hyper-parameters of the model. Our methodology is illustrated on an academic example.
机译:多保真模拟器是一个数字模型,其中一个输入控制了仿真的现实主义与计算成本之间的权衡。我们的目标是估计超过多保真随机模拟器上给出给定阈值的概率。我们提出了一种基于高斯过程的贝叶斯方法,计算这种概率的后验概率分布。我们特别注意模型的超参数。我们的方法在学术榜样上说明。

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