Alvarez-Vargas Daniela, Wan Sirui, Fuchs Lynn S, Klein Alice, Bailey Drew H
University of California, Irvine.
Vanderbilt University.
J Res Educ Eff. 2023;16(2):271-299. doi: 10.1080/19345747.2022.2093298. Epub 2022 Jul 7.
Despite policy relevance, longer-term evaluations of educational interventions are relatively rare. A common approach to this problem has been to rely on longitudinal research to determine targets for intervention by looking at the correlation between children's early skills (e.g., preschool numeracy) and medium-term outcomes (e.g., first-grade math achievement). However, this approach has sometimes over-or under-predicted the long-term effects (e.g., 5th-grade math achievement) of successfully improving early math skills. Using a within-study comparison design, we assess various approaches to forecasting medium-term impacts of early math skill-building interventions. The most accurate forecasts were obtained when including comprehensive baseline controls and using a combination of conceptually proximal and distal short-term outcomes (in the nonexperimental longitudinal data). Researchers can use our approach to establish a set of designs and analyses to predict the impacts of their interventions up to two years post-treatment. The approach can also be applied to power analyses, model checking, and theory revisions to understand mechanisms contributing to medium-term outcomes.
尽管具有政策相关性,但对教育干预措施进行的长期评估相对较少。解决这个问题的一种常见方法是依靠纵向研究,通过观察儿童早期技能(如学前算术能力)与中期结果(如一年级数学成绩)之间的相关性来确定干预目标。然而,这种方法有时会高估或低估成功提高早期数学技能的长期效果(如五年级数学成绩)。我们采用研究内比较设计,评估预测早期数学技能培养干预措施中期影响的各种方法。在纳入全面的基线对照并结合概念上接近和遥远的短期结果(在非实验性纵向数据中)时,可获得最准确的预测。研究人员可以使用我们的方法来建立一套设计和分析,以预测其干预措施在治疗后长达两年的影响。该方法还可应用于功效分析、模型检验和理论修订,以了解促成中期结果的机制。