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Upgrading from Gaussian Processes to Student's-T Processes

机译:从高斯过程升级到学生的T过程

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Gaussian process priors are commonly used in aerospace design for performing Bayesian optimization. Nonetheless, Gaussian processes suffer two significant drawbacks: outliers are a priori assumed unlikely, and the posterior variance conditioned on observed data depends only on the locations of those data, not the associated sample values. Student's-T processes are a generalization of Gaussian processes, founded on the Student's-T distribution instead of the Gaussian distribution. Student's-T processes maintain the primary advantages of Gaussian processes (kernel function, analytic update rule) with additional benefits beyond Gaussian processes. The Student's-T distribution has higher Kurtnsis than a Gaussian distribution and so outliers are much more likely, and the posterior variance increases or decreases depending on the variance of observed data sample values. Here, we describe Student's-T processes, and discuss their advantages in the context of aerospace optimization. We show how to construct a Student's-T process using a kernel function and how to update the process given new samples. We provide a clear derivation of optimization-relevant quantities such as expected improvement, and contrast with the related computations for Gaussian processes. Finally, we compare the performance of Student's-T processes against Gaussian process on canonical test problems in Bayesian optimization, and apply the Student's-T process to the optimization of an aerostructural design problem.
机译:高斯工艺前沿常用于航空航天设计,用于执行贝叶斯优化。尽管如此,高斯进程遭受两个重要缺点:异常值是假设不太可能的先验,并且在观察到的数据上调节的后差仅取决于这些数据的位置,而不是相关的样本值。学生-T进程是高斯流程的概括,以学生的-T分发而不是高斯分布。学生-T进程维持高斯进程(内核函数,分析更新规则)的主要优点,以及超越高斯过程的额外福利。学生-T分布具有比高斯分布更高的Kurtnsis,因此异常值更有可能,并且后续方差根据观察到的数据样本值的方差而增加或减少。在这里,我们描述了学生-T过程,并在航空航天优化的背景下讨论了它们的优势。我们展示了如何使用内核功能构建学生-T进程以及如何在给定新示例的过程中更新进程。我们提供了优化相关数量的清晰推导,例如预期的改进,与高斯过程的相关计算形成对比。最后,我们比较学生-T进程对高斯过程对高斯考试问题的拜耳优化的表现,并将学生-T流程应用于最佳系统设计问题。

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