Multi-Class Gaussian Process Classification Made Conjugate: Efficient Inference via Data Augmentation
Machine Learning
2019-05-24 v1 Machine Learning
Abstract
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.
Cite
@article{arxiv.1905.09670,
title = {Multi-Class Gaussian Process Classification Made Conjugate: Efficient Inference via Data Augmentation},
author = {Théo Galy-Fajou and Florian Wenzel and Christian Donner and Manfred Opper},
journal= {arXiv preprint arXiv:1905.09670},
year = {2019}
}
Comments
Accepted at UAI 2019