lmtp:一个用于估计改良治疗政策因果影响的R包

Nicholas T Williams, I. Díaz
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引用次数: 2

摘要

摘要:我们提出了纵向观察或随机研究因果推理的lmtp R包。该软件包实现了Díaz等人(2021)的估计器,用于估计基于修改后的治疗政策的一般非参数因果效应。修改后的治疗政策概括了静态和动态干预措施,使ltp成为观察性研究中非参数因果推断的万能包。所提供的方法可以应用于点处理和纵向设置,并且可以解释时变暴露,协变量和右审查,从而为因果推理提供了一个非常通用的工具。此外,所提供的两个估计器基于灵活的机器学习回归算法,避免了由于参数模型错误规范而导致的偏差,同时保持有效的统计推断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
lmtp: An R Package for Estimating the Causal Effects of Modified Treatment Policies
Abstract:We present the lmtp R package for causal inference from longitudinal observational or randomized studies. This package implements the estimators of Díaz et al. (2021) for estimating general non-parametric causal effects based on modified treatment policies. Modified treatment policies generalize static and dynamic interventions, making lmtp and all-purpose package for non-parametric causal inference in observational studies. The methods provided can be applied to both point-treatment and longitudinal settings, and can account for time-varying exposure, covariates, and right censoring thereby providing a very general tool for causal inference. Additionally, two of the provided estimators are based on flexible machine learning regression algorithms, and avoid bias due to parametric model misspecification while maintaining valid statistical inference.
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