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引用次数: 14
摘要
本研究解决了使用大观测数据来识别异质性治疗效果的普遍挑战。这个问题出现在精准医疗、目标营销、个性化教育和许多其他环境中。识别异质性治疗效果提出了几个分析挑战,包括高维性和内生性问题。我们开发了一种新的工具变量树(IVT)方法,将工具变量方法结合到因果树(CT)中,以纠正观测数据中可能存在的潜在内生性偏差。我们的IVT方法将受试者分为亚组,亚组内治疗效果相似,亚组间治疗效果不同。估计的治疗效果在一组温和的假设下是渐近一致的。使用模拟数据,我们表明我们的方法比传统的CT方法具有更好的覆盖率和更小的均方误差。我们还证明了使用IVTs构建的工具变量森林(IVF)比广义随机森林具有更好的准确性和分层性。最后,通过将体外受精方法应用于腹腔镜结肠切除术的经验评估,我们证明了考虑内质性的重要性,以便准确比较治疗(教学医院)和对照(非教学医院)对不同类型患者的异质效果。本文被大数据分析J. George Shanthikumar接受。
An Instrumental Variable Forest Approach for Detecting Heterogeneous Treatment Effects in Observational Studies
This study addresses the ubiquitous challenge of using big observational data to identify heterogeneous treatment effects. This problem arises in precision medicine, targeted marketing, personalized education, and many other environments. Identifying heterogeneous treatment effects presents several analytical challenges including high dimensionality and endogeneity issues. We develop a new instrumental variable tree (IVT) approach that incorporates the instrumental variable method into a causal tree (CT) to correct for potential endogeneity biases that may exist in observational data. Our IVT approach partitions subjects into subgroups with similar treatment effects within subgroups and different treatment effects across subgroups. The estimated treatment effects are asymptotically consistent under a set of mild assumptions. Using simulated data, we show our approach has a better coverage rate and smaller mean-squared error than the conventional CT approach. We also demonstrate that an instrumental variable forest (IVF) constructed using IVTs has better accuracy and stratification than a generalized random forest. Finally, by applying the IVF approach to an empirical assessment of laparoscopic colectomy, we demonstrate the importance of accounting for endogeneity to make accurate comparisons of the heterogeneous effects of the treatment (teaching hospitals) and control (nonteaching hospitals) on different types of patients. This paper was accepted by J. George Shanthikumar, big data analytics.