Fast Sparse Gaussian Process Methods: The Informative Vector Machine

Herbrich, Ralf, Lawrence, Neil D., Seeger, Matthias

Neural Information Processing Systems 

We present a framework for sparse Gaussian process (GP) methods which uses forward selection with criteria based on informationtheoretic principles,previously suggested for active learning. Our goal is not only to learn d-sparse predictors (which can be evaluated inO(d) rather than O(n), d n, n the number of training points), but also to perform training under strong restrictions on time and memory requirements.

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