Variational Inference for Gaussian Process Models with Linear Complexity

November 28, 2017 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Ching-An Cheng, Byron Boots arXiv ID 1711.10127 Category stat.ML: Machine Learning (Stat) Cross-listed cs.LG Citations 78 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
Large-scale Gaussian process inference has long faced practical challenges due to time and space complexity that is superlinear in dataset size. While sparse variational Gaussian process models are capable of learning from large-scale data, standard strategies for sparsifying the model can prevent the approximation of complex functions. In this work, we propose a novel variational Gaussian process model that decouples the representation of mean and covariance functions in reproducing kernel Hilbert space. We show that this new parametrization generalizes previous models. Furthermore, it yields a variational inference problem that can be solved by stochastic gradient ascent with time and space complexity that is only linear in the number of mean function parameters, regardless of the choice of kernels, likelihoods, and inducing points. This strategy makes the adoption of large-scale expressive Gaussian process models possible. We run several experiments on regression tasks and show that this decoupled approach greatly outperforms previous sparse variational Gaussian process inference procedures.
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