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An Empirical Study of Design Parameters for Assessing Differential Impacts for Students in Group Randomized Trials

机译:小组随机试验中评估学生差异影响的设计参数的实证研究

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Background: Prior research has investigated design parameters for assessing average program impacts on achievement outcomes with cluster randomized trials (CRTs). Less is known about parameters important for assessing differential impacts. Objectives: This article develops a statistical framework for designing CRTs to assess differences in impact among student subgroups and presents initial estimates of critical parameters. Research design: Effect sizes and minimum detectable effect sizes for average and differential impacts are calculated before and after conditioning on effects of covariates using results from several CRTs. Relative sensitivities to detect average and differential impacts are also examined. Subjects: Student outcomes from six CRTs are analyzed. Measures: Achievement in math, science, reading, and writing. Results: The ratio of between-cluster variation in the slope of the moderator divided by total variance-the "moderator gap variance ratio"-is important for designing studies to detect differences in impact between student subgroups. This quantity is the analogue of the intraclass correlation coefficient. Typical values were .02 for gender and .04 for socioeconomic status. For studies considered, in many cases estimates of differential impact were larger than of average impact, and after conditioning on effects of covariates, similar power was achieved for detecting average and differential impacts of the same size. Conclusions: Measuring differential impacts is important for addressing questions of equity, generalizability, and guiding interpretation of subgroup impact findings. Adequate power for doing this is in some cases reachable with CRTs designed to measure average impacts. Continuing collection of parameters for assessing differential impacts is the next step.
机译:背景:先前的研究已经调查了设计参数,以通过聚类随机试验(CRT)评估平均计划对成就成果的影响。对于评估差异影响重要的参数知之甚少。目标:本文开发了一个统计框架,用于设计CRT,以评估学生亚组之间影响的差异,并提出关键参数的初始估计。研究设计:使用多个CRT的结果对协变量的影响进行调整之前和之后,计算平均影响和差异影响的影响大小和最小可检测到的影响大小。还检查了检测平均和差异影响的相对灵敏度。主题:分析了六个CRT的学生成绩。度量:数学,科学,阅读和写作方面的成就。结果:主持人的倾斜度之间的集群间变化比率除以总方差(“主持人差距方差比率”)对于设计研究以检测学生子组之间的影响差异非常重要。该数量类似于类内相关系数。性别的典型值为.02,社会经济地位的典型值为.04。对于所考虑的研究,在许多情况下,差异影响的估算值要大于平均影响的估算值,并且在对协变量的效果进行条件调整后,获得了相似的功效来检测相同大小的平均值和差异影响。结论:测量差异影响对于解决公平性,可概括性以及指导对亚组影响发现的解释非常重要。在某些情况下,旨在测量平均影响的CRT可以提供足够的动力。下一步是继续收集用于评估差异影响的参数。

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