CLEAR: Calibrated Learning for Epistemic and Aleatoric Risk
Abstract
Accurate uncertainty quantification is critical for reliable predictive modeling, especially in regression tasks. Existing methods typically address either aleatoric uncertainty from measurement noise or epistemic uncertainty from limited data, but not necessarily both in a balanced way. We propose CLEAR, a calibration process with two distinct parameters,