overcalibration
Overcalibration is a phenomenon in which a calibration process or procedure becomes excessively tailored to a particular data set, condition, or reference standard to the point that the resulting measurements or predictions lose accuracy in other contexts. Proper calibration aims to align readings with true values within stated uncertainty; overcalibration occurs when adjustments overshoot or hinge on limited information, producing biased or overconfident results outside the calibration domain.
Contexts include metrology and instrumentation, statistics and machine learning, and financial risk modeling. In instrumentation, a
Causes and signs: limited calibration data or changes in the measured process, misspecified error models, overfitting
Mitigation involves using cross-validation and held-out data, preferring simpler and robust calibration models, explicitly modeling uncertainty,
See also: calibration, overfitting, model calibration, drift, sensor performance.