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Deep Sigma Point Processes

机译:深度Sigma点流程

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摘要

We introduce Deep Sigma Point Processes, a class of parametric models inspired by the compositional structure of Deep Gaussian Processes (DGPs). Deep Sigma Point Processes (DSPPs) retain many of the attractive features of (variational) DGPs, including mini-batch training and predictive uncertainty that is controlled by kernel basis functions. Importantly, since DSPPs admit a simple maximum likelihood inference procedure, the resulting predictive distributions are not degraded by any posterior approximations. In an extensive empirical comparison on univariate and multivariate regression tasks we find that the resulting predictive distributions are significantly better calibrated than those obtained with other probabilistic methods for scalable regression, including variational DGPs–often by as much as a nat per datapoint.
机译:我们介绍了深度的Sigma点流程,一类受到深层高斯过程的组成结构的参数模型(DGPS)。深度Sigma点过程(DSPPS)保留了许多(变分)DGP的有吸引力特征,包括由内核基函数控制的迷你批量培训和预测不确定性。重要的是,由于DSPPS承认了简单的最大似然推理过程,因此产生的预测分布不会被任何后近似劣化。在一个关于单变量和多变量回归任务的广泛经验比较中,我们发现所产生的预测分布显着更好地校准,而不是用其他概率方法获得的可扩展回归,包括变化的DGPS - 通常通过每DataPoint的NAT多样。

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