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Multi-Class Gaussian Process Classification Made Conjugate: Efficient Inference via Data Augmentation

机译:多级高斯工艺分类进行缀合物:通过数据增强有效推论

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We propose a new scalable multi-class Gaussian process classification approach building on a novel modified softmax likelihood function. The new likelihood has two benefits: it leads to well-calibrated uncertainty estimates and allows for an efficient latent variable augmentation. The augmented model has the advantage that it is conditionally conjugate leading to a fast variational inference method via block coordinate ascent updates. Previous approaches suffered from a trade-off between uncertainty calibration and speed. Our experiments show that our method leads to well-calibrated uncertainty estimates and competitive predictive performance while being up to two orders faster than the state of the art.
机译:我们提出了一种新的可扩展多级高斯工艺分类方法,用于新颖的修改软MAX似然函数。新的可能性有两个好处:它导致校准的不确定性估计良好,并允许有效的潜在可变增强。增强模型具有有条件地缀合物,其通过块坐标上升更新导致快速变分推理方法。以前的方法遭受了不确定性校准和速度之间的权衡。我们的实验表明,我们的方法导致良好校准的不确定性估计和竞争性预测性能,同时比最先进的速度快两次订单。

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