Epistemic uncertainty is the part of out-of-sample prediction error due to the lack of knowledge of the learner. Whereas previous work was focusing on model variance, we propose a principled approach for directly estimating epistemic uncertainty by learning to predict generalization error and subtracting an estimate of aleatoric uncertainty, i.e., intrinsic unpredictability. This estimator of epistemic uncertainty includes the effect of model bias (or misspecification) and is useful in interactive learning environments arising in active learning or reinforcement learning. In addition to discussing these properties of Direct Epistemic Uncertainty Prediction (DEUP), we illustrate its advantage against existing methods for uncertainty estimation on downstream tasks including sequential model optimization and reinforcement learning. We also evaluate the quality of uncertainty estimates from DEUP for probabilistic classification of images and for estimating uncertainty about synergistic drug combinations.
翻译:由于学习者缺乏知识而导致的预测误差是超模量预测误差的一部分。虽然先前的工作侧重于模型差异,但我们提议了一种原则性办法,通过学习预测一般误差和减去对偏移不确定性的估计(即内在不可预测性)来直接估计缩写不确定性。这种沉积不确定性的估测因素包括模型偏差(或偏差)的影响,并且对积极学习或强化学习过程中产生的互动式学习环境有用。除了讨论直接孔虫不确定性预测(DEUP)的这些特性外,我们还说明了其优势,说明现有方法对于下游任务的不确定性估计,包括顺序模型优化和强化学习。我们还评估DEUP的不确定性估计质量,以便对图像进行概率性分类,并估计协同药物组合的不确定性。