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Deep learning with differential Gaussian process flows

机译:具有差分高斯流程的深度学习

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We propose a novel deep learning paradigm of differential flows that learn a stochastic differential equation transformations of inputs prior to a standard classification or regression function. The key property of differential Gaussian processes is the warping of inputs through infinitely deep, but infinitesimal, differential fields, that generalise discrete layers into a dynamical system. We demonstrate excellent results as compared to deep Gaussian processes and Bayesian neural networks.
机译:我们提出了一种新颖的差分流深度学习范例,该范例可以在标准分类或回归函数之前学习输入的随机微分方程变换。差分高斯过程的关键特性是通过无限深但无限小的差分场对输入进行扭曲,这些场将离散层推广到一个动态系统中。与深度高斯过程和贝叶斯神经网络相比,我们展示了出色的结果。

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