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首页> 外文期刊>Research in Higher Education >Detecting selection bias, using propensity score matching, and estimating treatment effects: an application to the private returns to a master’s degree
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Detecting selection bias, using propensity score matching, and estimating treatment effects: an application to the private returns to a master’s degree

机译:使用倾向得分匹配来检测选择偏见,并估计治疗效果:向私人申请成为硕士学位

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摘要

Most research in the area of higher education is plagued by the problem of endogeneity or self-selection bias. Unlike ordinary least squares (OLS) regression, propensity score matching addresses the issue of self-selection bias and allows for a decomposition of treatment effects on outcomes. Using panel data from a national survey of bachelor’s degree recipients, this approach is illustrated via an analysis of the effect of receiving a master’s degree, in various program areas, on wage earning outcomes. The results of this study reveal that substantial self-selection bias is undetected when using OLS regression techniques. This article also shows that, unlike OLS regression, propensity score matching allows for estimates of the average treatment effect, average treatment on the treated effect, and the average treatment on the untreated effect on student outcomes such as wage earnings.
机译:高等教育领域的大多数研究都受到内生性或自我选择偏见的困扰。与普通最小二乘(OLS)回归不同,倾向得分匹配解决了自我选择偏差的问题,并允许分解治疗效果对结果的影响。使用来自全国学士学位接受者调查的面板数据,通过分析在各个计划领域获得硕士学位对工资收入结果的影响,说明了这种方法。这项研究的结果表明,使用OLS回归技术时,无法检测到明显的自我选择偏见。本文还显示,与OLS回归不同,倾向得分匹配可以估算平均治疗效果,对治疗效果的平均治疗以及对未治疗效果的平均治疗对学生收入(例如工资收入)的估计。

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