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Fast methods for training Gaussian processes on large datasets

机译:在大型数据集上训练高斯过程的快速方法

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Gaussian process regression (GPR) is a non-parametric Bayesian technique for interpolating or fitting data. The main barrier to further uptake of this powerful tool rests in the computational costs associated with the matrices which arise when dealing with large datasets. Here, we derive some simple results which we have found useful for speeding up the learning stage in the GPR algorithm, and especially for performing Bayesian model comparison between different covariance functions. We apply our techniques to both synthetic and real data and quantify the speed-up relative to using nested sampling to numerically evaluate model evidences.
机译:高斯过程回归(GPR)是用于插值或拟合数据的非参数贝叶斯技术。进一步采用这种强大工具的主要障碍在于处理大型数据集时与矩阵相关的计算成本。在这里,我们得出一些简单的结果,发现这些结果有助于加快GPR算法的学习阶段,尤其是对于执行不同协方差函数之间的贝叶斯模型比较。我们将我们的技术应用于合成数据和真实数据,并相对于使用嵌套采样对模型证据进行数值评估来量化提速。

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