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Fast Direct Methods for Gaussian Processes

机译:高斯过程的快速直接方法

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摘要

A number of problems in probability and statistics can be addressed using the multivariate normal (Gaussian) distribution. In the one-dimensional case, computing the probability for a given mean and variance simply requires the evaluation of the corresponding Gaussian density. In the -dimensional setting, however, it requires the inversion of an covariance matrix, , as well as the evaluation of its determinant, . In many cases, such as regression using Gaussian processes, the covariance matrix is of the form , where is computed using a specified covariance kernel which depends on the data and additional parameters (hyperparameters). The matrix is typically dense, causing standard direct methods for inversion and determinant evaluation to require work. This cost is prohibitive for large-scale modeling. Here, we show that for the most commonly used covariance functions, the matrix can be hierarchically factored into a product of block low-rank updates of the identity matrix, yielding an algorithm for inversion. More importantly, we show that this factorization enables the evaluation of the determinant , permitting the direct calculation of probabilities in high dimensions under fairly broad assumptions on the kernel defining . Our fast algorithm brings many problems in marginalization and the adaptation of hyperparameters within practical reach using a single CPU core. The combination of nearly optimal scaling in terms of problem size with high-performance computing resources will permit the modeling of previously intractable problems. We illustrate the performance of the scheme on standard covariance kernels.
机译:使用多元正态(高斯)分布可以解决概率和统计方面的许多问题。在一维情况下,计算给定均值和方差的概率仅需要评估相应的高斯密度。但是,在维设置中,它需要对协方差矩阵求逆,并需要对其行列式进行评估。在许多情况下,例如使用高斯过程进行回归,协方差矩阵的形式为,其中可以使用指定的协方差核计算,该核取决于数据和其他参数(超参数)。矩阵通常很稠密,导致需要进行反演和行列式评估的标准直接方法。对于大规模建模而言,此成本高得令人望而却步。在这里,我们表明,对于最常用的协方差函数,可以将矩阵分层分解为单位矩阵的块低秩更新的乘积,从而得出反演算法。更重要的是,我们证明了这种因式分解可以对行列式进行评估,从而可以在核定义的相当广​​泛的假设下直接计算高维概率。我们的快速算法使用单个CPU内核在边际化和超参数适应范围内带来了许多问题。就问题大小而言,近乎最佳的缩放比例与高性能计算资源的结合将允许对先前棘手的问题进行建模。我们说明了该方案在标准协方差内核上的性能。

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