Deep recurrent Gaussian process with variational Sparse Spectrum approximation
Modeling sequential data has become more and more important in practice. Some applications are autonomous driving, virtual sensors and weather forecasting. To model such systems, so called recurrent models are frequently used. In this paper we introduce several new Deep recurrent Gaussian process (D...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
27.09.2019
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Subjects | |
Online Access | Get full text |
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Summary: | Modeling sequential data has become more and more important in practice. Some
applications are autonomous driving, virtual sensors and weather forecasting.
To model such systems, so called recurrent models are frequently used. In this
paper we introduce several new Deep recurrent Gaussian process (DRGP) models
based on the Sparse Spectrum Gaussian process (SSGP) and the improved version,
called variational Sparse Spectrum Gaussian process (VSSGP). We follow the
recurrent structure given by an existing DRGP based on a specific variational
sparse Nystr\"om approximation, the recurrent Gaussian process (RGP). Similar
to previous work, we also variationally integrate out the input-space and hence
can propagate uncertainty through the Gaussian process (GP) layers. Our
approach can deal with a larger class of covariance functions than the RGP,
because its spectral nature allows variational integration in all stationary
cases. Furthermore, we combine the (variational) Sparse Spectrum ((V)SS)
approximations with a well known inducing-input regularization framework. We
improve over current state of the art methods in prediction accuracy for
experimental data-sets used for their evaluation and introduce a new data-set
for engine control, named Emission. |
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DOI: | 10.48550/arxiv.1909.13743 |