2022
DOI: 10.48550/arxiv.2205.12937
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Mitigating multiple descents: A model-agnostic framework for risk monotonization

Abstract: Recent empirical and theoretical analyses of several commonly used prediction procedures reveal a peculiar risk behavior in high dimensions, referred to as double/multiple descent, in which the asymptotic risk is a non-monotonic function of the limiting aspect ratio of the number of features or parameters to the sample size. To mitigate this undesirable behavior, we develop a general framework for risk monotonization based on cross-validation that takes as input a generic prediction procedure and returns a mod… Show more

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