Polynomial Representation of the Gaussian Process

Jesper Kristensen, I. Asher, Liping Wang
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引用次数: 2

Abstract

Gaussian Process (GP) regression is a well-established probabilistic meta-modeling and data analysis tool. The posterior distribution of the GP parameters can be estimated using, e.g., Markov Chain Monte Carlo (MCMC). The ability to make predictions is a key aspect of using such surrogate models. To make a GP prediction, the MCMC chain as well as the training data are required. For some applications, GP predictions can require too much computational time and/or memory, especially for many training data points. This motivates the present work to represent the GP in an equivalent polynomial (or other global functional) form called a portable GP. The portable GP inherits many benefits of the GP including feature ranking via Sobol indices, robust fitting to non-linear and high-dimensional data, accurate uncertainty estimates, etc. The framework expands the GP in a high-dimensional model representation (HDMR). After fitting each HDMR basis function with a polynomial, they are all added together to form the portable GP. A ranking of which basis functions to use in the fitting process is automatically provided via Sobol indices. The uncertainty from the fitting process can be propagated to the final GP polynomial estimate. In applications where speed and accuracy are paramount, spline fits to the basis functions give very good results. Finally, portable BHM provides an alternative set of assumptions with regards to extrapolation behavior which may be more appropriate than the assumptions inherent in GPs.
高斯过程的多项式表示
高斯过程(GP)回归是一种成熟的概率元建模和数据分析工具。GP参数的后验分布可以使用马尔可夫链蒙特卡罗(MCMC)等方法进行估计。预测能力是使用这种替代模型的一个关键方面。为了进行GP预测,除了需要训练数据外,还需要MCMC链。对于某些应用程序,GP预测可能需要太多的计算时间和/或内存,特别是对于许多训练数据点。这促使本文将GP表示为等效多项式(或其他全局泛函)形式,称为可移植GP。便携式GP继承了GP的许多优点,包括通过Sobol指标进行特征排序,对非线性和高维数据的鲁棒拟合,准确的不确定性估计等。该框架将GP扩展为高维模型表示(HDMR)。将每个HDMR基函数用多项式拟合后,将它们加在一起形成便携式GP。通过Sobol索引自动提供拟合过程中使用的基函数的排序。拟合过程的不确定性可以传播到最终的GP多项式估计。在速度和精度要求最高的应用中,样条对基函数的拟合可以得到很好的结果。最后,便携式BHM提供了一组关于外推行为的替代假设,这些假设可能比gp固有的假设更合适。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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