Identification of School Admission Effects Using Propensity Scores Based on a Matching Market Structure

Marin Drlje
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Abstract

A large literature estimates various school admission and graduation effects by employing variation in student admission scores around schools’ admission cutoffs, assuming (quasi-) random school assignment close to the cutoffs. In this paper, I present evidence suggesting that the samples corresponding to typical applications of the regression discontinuity design (RDD) fail to satisfy these assumptions. I distinguish ex-post randomization (as in admission lotteries applicable to those at the margin of admission) from ex-ante randomization, reflecting uncertainty about the market structure of applicants, which can be naturally quantified by resampling from the applicant population. Using data from the Croatian centralized collegeadmission system, I show that these ex-ante admission probabilities differ dramatically between treated and non-treated students within typical RDD bandwidths. Such unbalanced admission probability distributions suggest that bandwidths (and sample sizes) should be drastically reduced to avoid selection bias. I also show that a sizeable fraction of quasirandomized assignments occur outside of the typical RDD bandwidths, suggesting that these are also inefficient. As an alternative, I propose a new estimator, the Propensity Score Discontinuity Design (PSDD), based on all observations with random assignments, which compares outcomes of applicants matched on ex-ante admission probabilities, conditional on admission scores.
基于匹配市场结构的倾向得分识别入学效应
大量文献通过使用学校录取分数线附近学生录取分数的变化来估计各种学校录取和毕业的影响,假设(准)随机学校分配接近分数线。在本文中,我提出的证据表明,与回归不连续设计(RDD)的典型应用相对应的样本不能满足这些假设。我将事后随机化(如入学抽签适用于那些处于入学边缘的人)与事前随机化区分开来,反映了申请人市场结构的不确定性,这可以通过从申请人群体中重新抽样自然地量化。使用克罗地亚中央大学录取系统的数据,我表明在典型的RDD带宽内,接受治疗和未接受治疗的学生之间的这些事前录取概率差异很大。这种不平衡的录取概率分布表明,带宽(和样本量)应该大幅减少,以避免选择偏差。我还展示了相当大一部分准随机分配发生在典型RDD带宽之外,这表明这些分配也是低效的。作为一种替代方案,我提出了一种新的估计方法,即倾向得分不连续设计(PSDD),它基于随机分配的所有观察结果,以录取分数为条件,比较事先录取概率匹配的申请人的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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