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Sparse Convolved Gaussian Processes for Multi-output Regression

2008-12-01NeurIPS 2008Unverified0· sign in to hype

Mauricio Alvarez, Neil D. Lawrence

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Abstract

We present a sparse approximation approach for dependent output Gaussian processes (GP). Employing a latent function framework, we apply the convolution process formalism to establish dependencies between output variables, where each latent function is represented as a GP. Based on these latent functions, we establish an approximation scheme using a conditional independence assumption between the output processes, leading to an approximation of the full covariance which is determined by the locations at which the latent functions are evaluated. We show results of the proposed methodology for synthetic data and real world applications on pollution prediction and a sensor network.

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