Jan. 1, 2023, midnight | Toni Karvonen, Chris J. Oates

JMLR www.jmlr.org

Gaussian process regression underpins countless academic and industrial applications of machine learning and statistics, with maximum likelihood estimation routinely used to select appropriate parameters for the covariance kernel. However, it remains an open problem to establish the circumstances in which maximum likelihood estimation is well-posed, that is, when the predictions of the regression model are insensitive to small perturbations of the data. This article identifies scenarios where the maximum likelihood estimator fails to be well-posed, in that the predictive distributions …

academic applications article covariance data industrial kernel likelihood machine machine learning maximum likelihood estimation predictions predictive process regression small statistics

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