Combining Priors with Experience: Confidence Calibration Based on Binomial Process Modeling

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 t...

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Hauptverfasser: Dong, Jinzong, Jiang, Zhaohui, Pan, Dong, Yu, Haoyang
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description 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 a binomial process and maximizing the likelihood function of the binomial process. We prove that the calibration curve estimating method is Lipschitz continuous with respect to data distribution and requires a sample size of \(3/B\) of that required for histogram binning, where \(B\) represents the number of bins. Also, a new calibration metric (\(TCE_{bpm}\)), which leverages the estimated calibration curve to estimate the true calibration error (TCE), is designed. \(TCE_{bpm}\) is proven to be a consistent calibration measure. Furthermore, realistic calibration datasets can be generated by the binomial process modeling from a preset true calibration curve and confidence score distribution, which can serve as a benchmark to measure and compare the discrepancy between existing calibration metrics and the true calibration error. The effectiveness of our calibration method and metric are verified in real-world and simulated data.
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subjects Calibration
Conditional probability
Confidence
Continuity (mathematics)
Error analysis
Modelling
Statistical analysis
Statistical methods
title Combining Priors with Experience: Confidence Calibration Based on Binomial Process Modeling
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