Educational Research with Real-World Data: Reducing Selection Bias with Propensity Scores.

Q2 Social Sciences
J. Adelson
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引用次数: 29

Abstract

Often it is infeasible or unethical to use random assignment in educational settings to study important constructs and questions. Hence, educational research often uses observational data, such as large-scale secondary data sets and state and school district data, and quasi-experimental designs. One method of reducing selection bias in estimations of treatment effects is propensity score analysis. This method reduces a large number of pretreatment covariates to a single scalar function and allows researchers to compare subjects with similar probability to receive the treatment. This article provides an introduction to propensity score analysis and stratification, an example illustrating its use, and suggestions for using propensity score analysis in educational research.
现实世界数据的教育研究:用倾向分数减少选择偏差。
通常,在教育环境中使用随机分配来研究重要的构念和问题是不可行或不道德的。因此,教育研究经常使用观测数据,如大规模的二级数据集、州和学区数据,以及准实验设计。在估计治疗效果时减少选择偏差的一种方法是倾向评分分析。该方法将大量预处理协变量减少为单个标量函数,使研究人员能够比较具有相似概率接受治疗的受试者。本文介绍了倾向得分分析和分层,并举例说明了其应用,并对倾向得分分析在教育研究中的应用提出了建议。
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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CiteScore
2.60
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0.00%
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