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Understanding Probabilistic Sparse Gaussian Process Approximations

2016-06-15NeurIPS 2016Unverified0· sign in to hype

Matthias Bauer, Mark van der Wilk, Carl Edward Rasmussen

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Abstract

Good sparse approximations are essential for practical inference in Gaussian Processes as the computational cost of exact methods is prohibitive for large datasets. The Fully Independent Training Conditional (FITC) and the Variational Free Energy (VFE) approximations are two recent popular methods. Despite superficial similarities, these approximations have surprisingly different theoretical properties and behave differently in practice. We thoroughly investigate the two methods for regression both analytically and through illustrative examples, and draw conclusions to guide practical application.

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