Distribution-Free Model-Agnostic Regression Calibration via Nonparametric Methods
Shang Liu, Zhongze Cai, Xiaocheng Li

TL;DR
This paper introduces nonparametric, model-agnostic methods for individual regression calibration that provide statistical guarantees, addressing limitations of existing heuristic approaches and advancing theoretical understanding.
Contribution
It proposes simple, computationally efficient nonparametric calibration techniques with proven statistical consistency and matching bounds, improving individual calibration in regression models.
Findings
Methods achieve finite-sample guarantees
Outperform existing approaches under covariate shift
Theoretical bounds match empirical results
Abstract
In this paper, we consider the uncertainty quantification problem for regression models. Specifically, we consider an individual calibration objective for characterizing the quantiles of the prediction model. While such an objective is well-motivated from downstream tasks such as newsvendor cost, the existing methods have been largely heuristic and lack of statistical guarantee in terms of individual calibration. We show via simple examples that the existing methods focusing on population-level calibration guarantees such as average calibration or sharpness can lead to harmful and unexpected results. We propose simple nonparametric calibration methods that are agnostic of the underlying prediction model and enjoy both computational efficiency and statistical consistency. Our approach enables a better understanding of the possibility of individual calibration, and we establish matching…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Machine Learning and Algorithms · Machine Learning and Data Classification
