2022
DOI: 10.48550/arxiv.2205.15449
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Posterior and Computational Uncertainty in Gaussian Processes

Abstract: Gaussian processes scale prohibitively with the size of the dataset. In response, many approximation methods have been developed, which inevitably introduce approximation error. This additional source of uncertainty, due to limited computation, is entirely ignored when using the approximate posterior. Therefore in practice, GP models are often as much about the approximation method as they are about the data. Here, we develop a new class of methods that provides consistent estimation of the combined uncertaint… Show more

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