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Uncertainty quantification in metric spaces

By Gábor Lugosi and Marcos Matabuena
This paper introduces a novel uncertainty quantification framework for regression models where the response takes values in a separable metric space, and the predictors are in a Euclidean space. The proposed algorithms can efficiently handle large datasets and are agnostic to the predictive base model used. Furthermore, the algorithms possess... Show more
May 8, 2024
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Uncertainty quantification in metric spaces
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