Responsibly Emboldening Predictions via Boldness-Recalibration
Files
TR Number
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Probability predictions are essential to inform decision making across many fields. Ideally, probability predictions are (i) well calibrated, (ii) accurate, and (iii) bold, i.e., spread out enough to be informative for decision making. However, there is a fundamental tension between calibration and boldness, since calibration metrics can be high when predictions are overly cautious, i.e., non-bold. The purpose of this work is to develop a Bayesian model selection-based approach to assess calibration, and a strategy for boldness-recalibration that enables practitioners to responsibly embolden predictions subject to their required level of calibration. Specifically, we allow the user to pre-specify their desired posterior probability of calibration, then maximally embolden predictions subject to this constraint. We demonstrate the method with a case study on hockey home team win probabilities and then verify the performance of our procedures via simulation. Additionally, we introduce BRcal, an R package implementing Boldness-Recalibration and supporting methodology. We reformulate boldness-recalibration as a nonlinear optimization of boldness with a nonlinear constraint on calibration, and describe how this is implemented in BRcal. The BRcal package is demonstrated using a case study on foreclosure prediction. Lastly, we extend the methods to account for underlying spatial association in the data and demonstrate via a case study on moose presence.