Quantifying uncertainty in deep regression models is important both for understanding the confidence of the model and for safe decision-making in high-risk domains. Existing approaches that yield prediction intervals overlook distributional information, neglecting the effect of multimodal or asymmetric distributions on decision-making. Similarly, full or approximated Bayesian methods, while yielding the predictive posterior density, demand major modifications to the model architecture and retraining. We introduce MCNF, a novel post hoc uncertainty quantification method that produces both prediction intervals and the full conditioned predictive distribution. MCNF operates on top of the underlying trained predictive model; thus, no predictive model retraining is needed. We provide experimental evidence that the MCNF-based uncertainty estimate is well calibrated, is competitive with state-of-the-art uncertainty quantification methods, and provides richer information for downstream decision-making tasks.
翻译:在深度回归模型中量化不确定性对于理解模型的置信度及在高风险领域进行安全决策至关重要。现有方法虽能产生预测区间,却忽略了分布信息,未能考虑多模态或非对称分布对决策的影响。类似地,完整或近似的贝叶斯方法虽能给出预测后验密度,但需要对模型架构进行重大修改并重新训练。本文提出MCNF,一种新颖的后处理不确定性量化方法,可同时生成预测区间和完整的条件预测分布。MCNF在已训练的底层预测模型之上运行,因此无需重新训练预测模型。实验证据表明,基于MCNF的不确定性估计具有良好的校准性,与当前最先进的不确定性量化方法相比具有竞争力,并为下游决策任务提供了更丰富的信息。