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Efficient Optimization for Sparse Gaussian Process Regression

2013-10-22NeurIPS 2013Unverified0· sign in to hype

Yanshuai Cao, Marcus A. Brubaker, David J. Fleet, Aaron Hertzmann

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Abstract

We propose an efficient optimization algorithm for selecting a subset of training data to induce sparsity for Gaussian process regression. The algorithm estimates an inducing set and the hyperparameters using a single objective, either the marginal likelihood or a variational free energy. The space and time complexity are linear in training set size, and the algorithm can be applied to large regression problems on discrete or continuous domains. Empirical evaluation shows state-of-art performance in discrete cases and competitive results in the continuous case.

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