Combining Priors with Experience: Confidence Calibration Based on Binomial Process Modeling
Jinzong Dong, Zhaohui Jiang, Dong Pan, Haoyang Yu

TL;DR
This paper introduces a novel confidence calibration method that combines prior distribution modeling with empirical data using binomial process likelihood maximization, improving calibration accuracy and efficiency.
Contribution
It proposes a new calibration curve estimation technique integrating prior knowledge with data, along with a consistent calibration metric and a method for generating realistic calibration datasets.
Findings
The method requires fewer samples than histogram binning.
The calibration metric $TCE_{bpm}$ is proven to be consistent.
Effectiveness validated on real-world and simulated data.
Abstract
Confidence calibration of classification models is a technique to estimate the true posterior probability of the predicted class, which is critical for ensuring reliable decision-making in practical applications. Existing confidence calibration methods mostly use statistical techniques to estimate the calibration curve from data or fit a user-defined calibration function, but often overlook fully mining and utilizing the prior distribution behind the calibration curve. However, a well-informed prior distribution can provide valuable insights beyond the empirical data under the limited data or low-density regions of confidence scores. To fill this gap, this paper proposes a new method that integrates the prior distribution behind the calibration curve with empirical data to estimate a continuous calibration curve, which is realized by modeling the sampling process of calibration data as…
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Taxonomy
TopicsSimulation Techniques and Applications · Advanced Statistical Process Monitoring · Business Process Modeling and Analysis
