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Conformal uncertainty quantification using kernel depth measures in separable Hilbert spaces

By Marcos Matabuena and others
Depth measures have gained popularity in the statistical literature for defining level sets in complex data structures like multivariate data, functional data, and graphs. Despite their versatility, integrating depth measures into regression modeling for establishing prediction regions remains underexplored. To address this gap, we propose a novel method utilizing a... Show more
May 22, 2024
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Conformal uncertainty quantification using kernel depth measures in separable Hilbert spaces
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