论文标题
在协变量偏移下对预测集的双重校准
Doubly Robust Calibration of Prediction Sets under Covariate Shift
论文作者
论文摘要
近年来,共形预测受到了极大的关注,并为缺失数据和因果推理的问题提供了新的解决方案。然而,这些进步尚未利用现代的半参数效率理论来实现更强大和有效的不确定性量化。在本文中,我们考虑了获得无分配预测区域的问题,这些区域涉及培训和测试数据之间协变量分布的变化。在与随机假设下的标准丢失类似的可解释的协变性假设下,我们提出了一个通用框架的三种变体,以构建测试样本中未观察到的结果的良好校准的预测区域。我们的方法基于测试人群中未观察结果的分位数与任意机器学习预测算法相结合的有效影响函数,而无需损害渐近覆盖范围。接下来,我们扩展了在半参数灵敏度分析中与可解释的协变量假设不同的方法,以实现潜在的潜在协变量转移。在所有情况下,我们确定所得的预测集最终在大型样本中获得了名义平均覆盖范围。此保证是我们建议的产品偏差形式的结果,这意味着如果倾向得分或条件分布的估计得很好,则覆盖范围是正确的。我们的结果还为构建双重稳健预测的个体治疗效果集提供了一个框架,这既有不满意,又允许一定程度的无法衡量的混杂。最后,我们讨论了来自不同机器学习算法的预测集的聚合,以进行最佳预测,并说明了合成和真实数据中方法的性能。
Conformal prediction has received tremendous attention in recent years and has offered new solutions to problems in missing data and causal inference; yet these advances have not leveraged modern semiparametric efficiency theory for more robust and efficient uncertainty quantification. In this paper, we consider the problem of obtaining distribution-free prediction regions accounting for a shift in the distribution of the covariates between the training and test data. Under an explainable covariate shift assumption analogous to the standard missing at random assumption, we propose three variants of a general framework to construct well-calibrated prediction regions for the unobserved outcome in the test sample. Our approach is based on the efficient influence function for the quantile of the unobserved outcome in the test population combined with an arbitrary machine learning prediction algorithm, without compromising asymptotic coverage. Next, we extend our approach to account for departure from the explainable covariate shift assumption in a semiparametric sensitivity analysis for potential latent covariate shift. In all cases, we establish that the resulting prediction sets eventually attain nominal average coverage in large samples. This guarantee is a consequence of the product bias form of our proposal which implies correct coverage if either the propensity score or the conditional distribution of the response is estimated sufficiently well. Our results also provide a framework for construction of doubly robust prediction sets of individual treatment effects, under both unconfoundedness and allowing for some degree of unmeasured confounding. Finally, we discuss aggregation of prediction sets from different machine learning algorithms for optimal prediction and illustrate the performance of our methods in both synthetic and real data.