Feb. 13, 2024, 5:44 a.m. | Luben M. C. Cabezas Mateus P. Otto Rafael Izbicki Rafael B. Stern

cs.LG updates on arXiv.org arxiv.org

Predictive models make mistakes. Hence, there is a need to quantify the uncertainty associated with their predictions. Conformal inference has emerged as a powerful tool to create statistically valid prediction regions around point predictions, but its naive application to regression problems yields non-adaptive regions. New conformal scores, often relying upon quantile regressors or conditional density estimators, aim to address this limitation. Although they are useful for creating prediction bands, these scores are detached from the original goal of quantifying the …

application cs.lg inference mistakes prediction predictions predictive predictive models quantile regression stat.ml tool trees uncertainty

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