Bootstrapped Control Limits for Score-Based Concept Drift Control Charts
arXiv stat.ML / 3/24/2026
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Key Points
- The paper addresses concept drift detection by monitoring changes in the mean of a supervised model’s Fisher score vector using a multivariate exponentially weighted moving average (MEWMA).
- It improves the calibration of MEWMA control limits by introducing a nested bootstrap procedure that uses the entire initial dataset for model fitting, removing the need for a large out-of-sample holdout set.
- The authors show standard nested bootstrap calibration can underestimate the variability of the monitoring statistic and propose a 0.632-like correction to better account for this bias.
- The outer bootstrap loop is designed to be fully parallelizable, making the approach computationally feasible with control-limit setup times comparable to or faster than the previous method.
- Numerical experiments illustrate that the corrected, bootstrap-calibrated control limits yield advantages over the baseline calibration strategy.
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