2022
DOI: 10.48550/arxiv.2206.08972
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Shallow and Deep Nonparametric Convolutions for Gaussian Processes

Abstract: A key challenge in the practical application of Gaussian processes (GPs) is selecting a proper covariance function. The moving average, or process convolutions, construction of GPs allows some additional flexibility, but still requires choosing a proper smoothing kernel, which is non-trivial. Previous approaches have built covariance functions by using GP priors over the smoothing kernel, and by extension the covariance, as a way to bypass the need to specify it in advance. However, such models have been limit… Show more

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