Estimating long-term causal effects from short-term experiments and long-term observational data with unobserved confounding

CLEaR Pub Date : 2023-02-21 DOI:10.48550/arXiv.2302.10625
Graham W. Van Goffrier, Lucas Maystre, Ciarán M. Gilligan-Lee
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引用次数: 2

Abstract

Understanding and quantifying cause and effect is an important problem in many domains. The generally-agreed solution to this problem is to perform a randomised controlled trial. However, even when randomised controlled trials can be performed, they usually have relatively short duration's due to cost considerations. This makes learning long-term causal effects a very challenging task in practice, since the long-term outcome is only observed after a long delay. In this paper, we study the identification and estimation of long-term treatment effects when both experimental and observational data are available. Previous work provided an estimation strategy to determine long-term causal effects from such data regimes. However, this strategy only works if one assumes there are no unobserved confounders in the observational data. In this paper, we specifically address the challenging case where unmeasured confounders are present in the observational data. Our long-term causal effect estimator is obtained by combining regression residuals with short-term experimental outcomes in a specific manner to create an instrumental variable, which is then used to quantify the long-term causal effect through instrumental variable regression. We prove this estimator is unbiased, and analytically study its variance. In the context of the front-door causal structure, this provides a new causal estimator, which may be of independent interest. Finally, we empirically test our approach on synthetic-data, as well as real-data from the International Stroke Trial.
估计短期实验和长期观测数据的长期因果效应,伴有未观察到的混淆
理解和量化因果关系是许多领域的重要问题。对于这个问题,普遍同意的解决方案是进行随机对照试验。然而,即使可以进行随机对照试验,由于成本考虑,它们通常持续时间相对较短。这使得学习长期因果效应在实践中成为一项非常具有挑战性的任务,因为长期结果只有在很长一段时间后才能观察到。在本文中,我们研究了在实验和观测数据都可用的情况下,长期治疗效果的识别和估计。以前的工作提供了一种估计策略,以确定这些数据制度的长期因果关系。然而,这种策略只有在假设观测数据中没有未观察到的混杂因素时才有效。在本文中,我们具体解决了观测数据中存在未测量混杂因素的具有挑战性的情况。我们的长期因果效应估计量是通过将回归残差与短期实验结果以特定的方式结合来创建一个工具变量,然后通过工具变量回归来量化长期因果效应。我们证明了这个估计量是无偏的,并分析研究了它的方差。在前门因果结构的背景下,这提供了一个新的因果估计量,它可能是独立的兴趣。最后,我们对合成数据以及来自国际中风试验的真实数据进行了实证检验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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