The Minecraft Kernel: Modelling correlated Gaussian Processes in the Fourier domain

Artificial Intelligence and Statistics, 2021 In the univariate setting, using the kernel spectral representation is an appealing approach for generating stationary covariance functions. However, performing the same task for multiple-output Gaussian processes is substantially more challenging. We dem...

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Hauptverfasser: Simpson, Fergus, Boukouvalas, Alexis, Cadek, Vaclav, Sarkans, Elvijs, Durrande, Nicolas
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Boukouvalas, Alexis
Cadek, Vaclav
Sarkans, Elvijs
Durrande, Nicolas
description Artificial Intelligence and Statistics, 2021 In the univariate setting, using the kernel spectral representation is an appealing approach for generating stationary covariance functions. However, performing the same task for multiple-output Gaussian processes is substantially more challenging. We demonstrate that current approaches to modelling cross-covariances with a spectral mixture kernel possess a critical blind spot. For a given pair of processes, the cross-covariance is not reproducible across the full range of permitted correlations, aside from the special case where their spectral densities are of identical shape. We present a solution to this issue by replacing the conventional Gaussian components of a spectral mixture with block components of finite bandwidth (i.e. rectangular step functions). The proposed family of kernel represents the first multi-output generalisation of the spectral mixture kernel that can approximate any stationary multi-output kernel to arbitrary precision.
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title The Minecraft Kernel: Modelling correlated Gaussian Processes in the Fourier domain
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