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Machine learning in the estimation of causal effects: targeted minimum loss-based estimation and double/debiased machine learning

机译:机器学习在估算因果效应:目标最小损失估计和双/下叠机学习

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摘要

In recent decades, the fields of statistical and machine learning have seen a revolution in the development of data-adaptive regression methods that have optimal performance under flexible, sometimes minimal, assumptions on the true regression functions. These developments have impacted all areas of applied and theoretical statistics and have allowed data analysts to avoid the biases incurred under the pervasive practice of parametric model misspecification. In this commentary, I discuss issues around the use of data-adaptive regression in estimation of causal inference parameters. To ground ideas, I focus on two estimation approaches with roots in semi-parametric estimation theory: targeted minimum loss-based estimation (TMLE; van der Laan and Rubin, 2006) and double/debiased machine learning (DML; Chernozhukov and others, 2018). This commentary is not comprehensive, the literature on these topics is rich, and there are many subtleties and developments which I do not address. These two frameworks represent only a small fraction of an increasingly large number of methods for causal inference using machine learning. To my knowledge, they are the only methods grounded in statistical semi-parametric theory that also allow unrestricted use of data-adaptive regression techniques.
机译:近几十年来,统计和机器学习的领域已经看到了在柔性,有时最小,假设下具有最佳性能的数据 - 自适应回归方法的革命,有时是真正的回归函数的假设。这些事态发展影响了应用和理论统计的所有领域,并允许数据分析师避免在参数模型拼盘的普遍实践下产生的偏见。在此评论中,我讨论了在因因果推断参数估计中使用数据自适应回归的问题。对地面的想法,我专注于半参数估计理论中的两种估计方法:目标最小损失的估计(TMLE; van der Laan和Rubin,2006)和双/脱叠机器学习(DML; Chernozhukov和其他人,2018年)。这项评论并不全面,这些主题的文献是丰富的,并且有许多我没有地址的微妙的微妙之处和发展。这两个框架仅代表了使用机器学习的因果推断的越来越大的方法的一小部分。据我所知,它们是唯一在统计半参数理论的方法,也允许不受限制地使用数据适应性回归技术。

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