Uncertainty quantification for wide-bin unfolding: one-at-a-time strict bounds and prior-optimized confidence intervals
Michael Stanley, Pratik Patil, Mikael Kuusela

TL;DR
This paper introduces two new statistical methods, OSB and PO, to improve uncertainty quantification in wide-bin unfolding problems in particle physics, ensuring well-calibrated confidence intervals despite bias.
Contribution
The paper proposes novel bias correction methods, OSB and PO, for wide-bin unfolding, enhancing confidence interval coverage in ill-posed inverse problems.
Findings
OSB and PO methods achieve reliable coverage in simulations.
Both methods outperform existing approaches in bias correction.
Applicable to complex, constrained unfolding scenarios.
Abstract
Unfolding is an ill-posed inverse problem in particle physics aiming to infer a true particle-level spectrum from smeared detector-level data. For computational and practical reasons, these spaces are typically discretized using histograms, and the smearing is modeled through a response matrix corresponding to a discretized smearing kernel of the particle detector. This response matrix depends on the unknown shape of the true spectrum, leading to a fundamental systematic uncertainty in the unfolding problem. To handle the ill-posed nature of the problem, common approaches regularize the problem either directly via methods such as Tikhonov regularization, or implicitly by using wide-bins in the true space that match the resolution of the detector. Unfortunately, both of these methods lead to a non-trivial bias in the unfolded estimator, thereby hampering frequentist coverage guarantees…
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Taxonomy
TopicsStatistical Methods and Inference · Gaussian Processes and Bayesian Inference · Statistical Methods and Bayesian Inference
