Multi-Source Conformal Inference Under Distribution Shift.

Yi Liu, Alexander W Levis, Sharon-Lise Normand, Larry Han
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Abstract

Recent years have experienced increasing utilization of complex machine learning models across multiple sources of data to inform more generalizable decision-making. However, distribution shifts across data sources and privacy concerns related to sharing individual-level data, coupled with a lack of uncertainty quantification from machine learning predictions, make it challenging to achieve valid inferences in multi-source environments. In this paper, we consider the problem of obtaining distribution-free prediction intervals for a target population, leveraging multiple potentially biased data sources. We derive the efficient influence functions for the quantiles of unobserved outcomes in the target and source populations, and show that one can incorporate machine learning prediction algorithms in the estimation of nuisance functions while still achieving parametric rates of convergence to nominal coverage probabilities. Moreover, when conditional outcome invariance is violated, we propose a data-adaptive strategy to upweight informative data sources for efficiency gain and downweight non-informative data sources for bias reduction. We highlight the robustness and efficiency of our proposals for a variety of conformal scores and data-generating mechanisms via extensive synthetic experiments. Hospital length of stay prediction intervals for pediatric patients undergoing a high-risk cardiac surgical procedure between 2016-2022 in the U.S. illustrate the utility of our methodology.

分布偏移下的多源共形推理
近年来,人们越来越多地利用跨多个数据源的复杂机器学习模型来为更具通用性的决策提供信息。然而,数据源之间的分布变化和与共享个人层面数据相关的隐私问题,再加上机器学习预测缺乏不确定性量化,使得在多源环境中实现有效推断具有挑战性。在本文中,我们考虑的问题是如何利用多个可能存在偏差的数据源,获得目标人群的无分布预测区间。我们推导出了目标人群和源人群中未观测到结果的量值的有效影响函数,并证明了在估计骚扰函数时可以结合机器学习预测算法,同时仍能达到名义覆盖概率的参数收敛率。此外,当违反条件结果不变性时,我们提出了一种数据自适应策略,即提高信息数据源的权重以提高效率,降低非信息数据源的权重以减少偏差。我们通过大量的合成实验,强调了我们的建议对于各种保形得分和数据生成机制的稳健性和效率。2016-2022 年间美国接受高风险心脏外科手术的儿科患者的住院时间预测区间说明了我们的方法的实用性。
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