Alfred Weber Institute of Economics, Heidelberg University, 69115 Heidelberg, Germany;
Computational Statistics Group, Heidelberg Institute for Theoretical Studies, 69118 Heidelberg, Germany.
Proc Natl Acad Sci U S A. 2021 Feb 23;118(8). doi: 10.1073/pnas.2016191118.
A probability forecast or probabilistic classifier is reliable or calibrated if the predicted probabilities are matched by ex post observed frequencies, as examined visually in reliability diagrams. The classical binning and counting approach to plotting reliability diagrams has been hampered by a lack of stability under unavoidable, ad hoc implementation decisions. Here, we introduce the CORP approach, which generates provably statistically consistent, optimally binned, and reproducible reliability diagrams in an automated way. CORP is based on nonparametric isotonic regression and implemented via the pool-adjacent-violators (PAV) algorithm-essentially, the CORP reliability diagram shows the graph of the PAV-(re)calibrated forecast probabilities. The CORP approach allows for uncertainty quantification via either resampling techniques or asymptotic theory, furnishes a numerical measure of miscalibration, and provides a CORP-based Brier-score decomposition that generalizes to any proper scoring rule. We anticipate that judicious uses of the PAV algorithm yield improved tools for diagnostics and inference for a very wide range of statistical and machine learning methods.
如果预测概率与事后观察到的频率相匹配,即通过可靠性图进行直观检查,则概率预测或概率分类器是可靠或校准的。经典的分箱和计数方法绘制可靠性图受到不可避免的特定实现决策下缺乏稳定性的阻碍。在这里,我们引入了 CORP 方法,该方法以自动化的方式生成可证明在统计上一致、最优分箱和可重复的可靠性图。CORP 基于非参数单调回归,并通过池邻域违反者(PAV)算法实现 - 本质上,CORP 可靠性图显示了 PAV-(重新)校准预测概率的图形。CORP 方法允许通过重采样技术或渐近理论进行不确定性量化,提供了校准不足的数值度量,并提供了基于 CORP 的 Brier 得分分解,可推广到任何适当的评分规则。我们预计,明智地使用 PAV 算法将为非常广泛的统计和机器学习方法提供改进的诊断和推理工具。