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首页> 外文期刊>Journal of Econometrics >Modeling and calculating the effect of treatment at baseline from panel outcomes
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Modeling and calculating the effect of treatment at baseline from panel outcomes

机译:根据专家组结果对基线的治疗效果进行建模和计算

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We propose and examine a panel data model for isolating the effect of a treatment, taken once at baseline, from outcomes observed over subsequent time periods. In the model, the treatment intake and outcomes are assumed to be correlated, due to unobserved or unmeasured confounders. Intake is partly determined by a set of instrumental variables and the confounding on unobservables is modeled in a flexible way, varying both by time and treatment state. Covariate effects are assumed to be subject-specific and potentially correlated with other covariates. Estimation and inference is by Bayesian methods that are implemented by tuned Markov chain Monte Carlo methods. Because our analysis is based on the framework developed by Chib [2004. Analysis of treatment response data without the joint distribution of counterfactuals. Journal of Econometrics, in press], the modeling and estimation does not involve either the unknowable joint distribution of the potential outcomes or the missing counterf actuals. Theproblem of model choice through marginal likelihoods and Bayes factors is also considered. The methods are illustrated in simulation experiments and in an application dealing with the effect of participation in high school athletics on future labor market earnings.
机译:我们提出并检查了一个面板数据模型,用于将在基线时采取的治疗效果与随后一段时间内观察到的结果隔离开。在该模型中,由于未观察到或无法测量的混杂因素,假定治疗的摄入量与结果相关。摄入量部分由一组工具变量确定,不可观察因素的混淆以灵活的方式建模,随时间和治疗状态而变化。协变量效应被认为是特定于受试者的,并且可能与其他协变量相关。估计和推论是通过贝叶斯方法实现的,该方法是通过调整的马尔可夫链蒙特卡罗方法实现的。因为我们的分析基于Chib [2004年开发的框架。分析治疗反应数据,而无反事实的联合分布。 [正在出版的《计量经济学杂志》,]建模和估计既不涉及潜在结果的未知联合分布,也没有涉及缺少的反事实。还考虑了通过边际可能性和贝叶斯因素进行模型选择的问题。在模拟实验中以及在处理参加高中田径运动对未来劳动力市场收益的影响的应用中说明了这些方法。

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