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首页> 外文期刊>The Review of Economic Studies >Training, Wages, and Sample Selection: Estimating Sharp Bounds on Treatment Effects
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Training, Wages, and Sample Selection: Estimating Sharp Bounds on Treatment Effects

机译:培训,工资和样品选择:估计治疗效果的界限

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This paper empirically assesses the wage effects of the Job Corps program, one of the largest federally funded job training programs in the U.S. Even with the aid of a randomized experiment, the impact of a training program on wages is difficult to study because of sample selection, a pervasive problem in applied mieroeconometric research. Wage rates are only observed for those who are employed, and employment status itself may be affected by the training program. This paper develops an intuitive trimming procedure for bounding average treatment effects in the presence of sample selection. In contrast to existing methods, the procedure requires neither exclusion restrictions nor a bounded support for the outcome of interest. Identification results, estimators, and their asymptotic distribution are presented. The bounds suggest that the program raised wages, consistent with the notion that the Job Corps raises earnings by increasing human capital, rather than solely through encouraging work. The estimator is generally applicable to typical treatment evaluation problems in which there is nonrandom sample selection/attrition.
机译:本文通过经验评估了Job Corps计划(美国最大的联邦资助的职业培训计划之一)的工资影响。即使借助随机实验,由于样本选择,培训计划对工资的影响也很难研究,是应用微观计量经济学研究中普遍存在的问题。工资率仅适用于受雇的人员,并且就业状况本身可能会受培训计划的影响。本文开发了一种直观的修整程序,用于在存在样本选择的情况下限制平均处理效果。与现有方法相反,该程序既不需要排除限制,也不需要对感兴趣结果的有限支持。给出了识别结果,估计量及其渐近分布。边界表明,该计划提高了工资,这与乔布斯集团通过增加人力资本而不是仅仅通过鼓励工作来增加收入的观念相一致。该估计器通常适用于样本选择/损耗非随机的典型治疗评估问题。

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