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Constant-Time Predictive Distributions for Gaussian Processes

机译:高斯过程的恒定时间预测分布

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One of the most compelling features of Gaussian process (GP) regression is its ability to provide well-calibrated posterior distributions. Recent advances in inducing point methods have sped up GP marginal likelihood and posterior mean computations, leaving posterior covariance estimation and sampling as the remaining computational bottlenecks. In this paper we address these shortcomings by using the Lanczos algorithm to rapidly approximate the predictive covariance matrix. Our approach, which we refer to as LOVE (LanczOs Variance Estimates), substantially improves time and space complexity. In our experiments, LOVE computes covariances up to 2,000 times faster and draws samples 18,000 times faster than existing methods, all without sacrificing accuracy.
机译:高斯过程(GP)回归的最引人注目的功能之一是它能够提供经过良好校准的后验分布。归纳点方法的最新进展加快了GP边际可能性和后验均值计算的速度,而后验协方差估计和采样仍然是剩余的计算瓶颈。在本文中,我们通过使用Lanczos算法快速逼近预测协方差矩阵来解决这些缺点。我们的方法被称为LOVE(LanczOs方差估计),大大改善了时间和空间的复杂性。在我们的实验中,LOVE的协方差运算速度比现有方法快2,000倍,绘制样本的速度比现有方法快18,000倍,而所有这些都不会牺牲准确性。

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