资源论文State Space Gaussian Processes with Non-Gaussian Likelihood

State Space Gaussian Processes with Non-Gaussian Likelihood

2020-03-16 | |  61 |   39 |   0

Abstract

We provide a comprehensive overview and tooling for GP modeling with non-Gaussian likelihoods using state space methods. The state space formulation allows to solve one-dimensional GP models in O(n) time and memory complexity. While existing literature has focused on the connection between GP regression and state space methods, the computational primitives allowing for inference using general likelihoods in combination with the Laplace approximation (LA), variational Bayes (VB), and assumed density filtering (ADF, a.k.a. single-sweep expectation propagation, EP) schemes has been largely overlooked. We present means of combining the efficient O(n) state space methodology with existing inference methods. We extend existing methods, and provide unifying code implementing all approaches.

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