Sequential, multiple assignment randomized trials (SMARTs), which assist in the optimization of adaptive interventions, are growing in popularity in education and behavioral sciences. This is unsurprising, as adaptive interventions reflect the sequential, tailored nature of learning in a classroom or school. Nonetheless, as is true elsewhere in education research, observed effect sizes in education-based SMARTs are frequently small. As a consequence, statistical efficiency is of paramount importance in their analysis. The contributions of this manuscript are two-fold. First, we provide an overview of adaptive interventions and SMART designs for researchers in education science. Second, we propose four techniques that have the potential to improve statistical efficiency in the analysis of SMARTs. We demonstrate the benefits of these techniques in SMART settings both through the analysis of a SMART designed to optimize an adaptive intervention for increasing cognitive behavioral therapy delivery in school settings and through a comprehensive simulation study. Each of the proposed techniques is easily implementable, either with over-the-counter statistical software or through R code provided in an online supplement.
翻译:顺序多重分配随机试验(SMART)作为优化适应性干预的方法,在教育和行为科学领域越来越流行。这并不奇怪,因为自适应干预反映了课堂或学校学习的顺序、定制化的本质。尽管如此,在教育的SMART研究中,观察到的效应大小经常很小,因此,在它们的分析中,统计效率至关重要。本文的贡献有两个方面。首先,我们为教育科学研究人员提供自适应干预和SMART设计的概述。其次,我们提出了四种技术,有潜力改善SMARTs的统计效率。我们通过分析旨在优化学校环境下的认知行为疗法交付的适应性干预的SMART和综合模拟研究来证明这些技术的好处。所提出的每种技术都易于实施,可以使用市售统计软件或在线补充资料中提供的R代码实现。