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The Efficacy of Propensity Score Matching in Bias Reduction with Limited Sample Sizes

机译:倾向得分匹配在有限样本量下的偏倚减少中的功效

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摘要

The current literature on propensity score matching is missing imperative information for educational researchers regarding the practical implications of utilizing this method with limited sample sizes. The purpose of this study was to evaluate the effectiveness of propensity score matching when limited by sample sizes of 500,400, 300, and 200 as determined by a reduction in bias using both real and simulated data. Further effort was made to determine the optimal selection of covariates and caliper width with these limited sample sizes. Participants were selected without replacement and matched one-to-one using the nearest neighbor technique in the MatchIt package in the R software program. Contrary to the hypothesis that with reduction in sample size the balance improvement would drop below what is considered effective bias reduction, the reduction in bias was greater than 96.77% for all conditions of sample size and caliper width. A Monte Carlo simulation was created based on the real dataset to assess covariate selection with the same limitations in sample size and a set caliper width of 0.6. For all replications, the mean balance improvement was best for the covariate relationship magnitude strong_none (strong relationship to DV_no relationship to treatment) and worst for the relationship mod_strong (moderate relationship to DV_strong relationship to treatment). Only the covariate relationship strong_none was able to be deemed effective matching for all sample sizes. Findings suggest that propensity score matching can be effective at reducing bias with sample sizes as small as 200 and caliper widths as wide as 0.6. Ideal covariates are those that are strongly related to the outcome variable and only weakly or moderately related to treatment when sample sizes are limited.;Keywords: Propensity Score Matching, Sample Size, MatchIt.
机译:目前有关倾向得分匹配的文献对于教育研究人员来说缺少有关在有限样本量下使用此方法的实际含义的必要信息。这项研究的目的是评估当真实样本和模拟数据均受偏倚的减少所确定的样本量500,400、300和200限制时,倾向得分匹配的有效性。在这些有限的样本量下,需要做出进一步的努力来确定协变量和卡尺宽度的最佳选择。选择参与者时无需替换,并使用R软件程序中MatchIt软件包中的最近邻技术一对一匹配。与以下假设相反:随着样本量的减少,平衡的改善将下降到低于有效偏倚的水平以下,在所有样本量和卡尺宽度的条件下,偏倚的减少均大于96.77%。基于真实数据集创建了蒙特卡洛模拟,以评估变量大小相同且卡尺宽度设置为0.6的限制的协变量选择。对于所有重复,均值平衡改善对协变量关系强度strong_none(与DV_strong关系与治疗无密切关系)的最佳变化,而对mod_strong(与DV_strong关系与治疗的中等关系)的最差变化。对于所有样本量,只有协变量“ strong_none”被认为是有效匹配。研究结果表明,倾向分数匹配可以有效减少样本大小为200的样本和卡尺宽度为0.6的样本的偏差。理想的协变量是那些与结果变量密切相关的变量,只有在样本量有限的情况下才与治疗弱或中度相关的协变量。关键词:倾向得分匹配,样本量,MatchIt。

著录项

  • 作者

    Howarter, Stephani.;

  • 作者单位

    University of Kansas.;

  • 授予单位 University of Kansas.;
  • 学科 Psychology.;Education.;Applied mathematics.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 119 p.
  • 总页数 119
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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