当前位置: X-MOL 学术Annu. Rev. Stat. Appl. › 论文详情
Our official English website, www.x-mol.net, welcomes your feedback! (Note: you will need to create a separate account there.)
Randomized Experiments in Education, with Implications for Multilevel Causal Inference
Annual Review of Statistics and Its Application ( IF 7.4 ) Pub Date : 2020-03-09 , DOI: 10.1146/annurev-statistics-031219-041205
Stephen W. Raudenbush 1 , Daniel Schwartz 2
Affiliation  

Education research has experienced a methodological renaissance over the past two decades, with a new focus on large-scale randomized experiments. This wave of experiments has made education research an even more exciting area for statisticians, unearthing many lessons and challenges in experimental design, causal inference, and statistics more broadly. Importantly, educational research and practice almost always occur in a multilevel setting, which makes the statistics relevant to other fields with this structure, including social policy, health services research, and clinical trials in medicine. In this article we first briefly review the history that led to this new era in education research and describe the design features that dominate the modern large-scale educational experiments. We then highlight some of the key statistical challenges in this area, including endogeneity of design, heterogeneity of treatment effects, noncompliance with treatment assignment, mediation, generalizability, and spillover. Though a secondary focus, we also touch on promising trial designs that answer more nuanced questions, such as the SMART design for studying dynamic treatment regimes and factorial designs for optimizing the components of an existing treatment.

中文翻译:


教育中的随机实验,对多层次因果推理有影响

在过去的二十年中,教育研究经历了方法论的复兴,新的重点是大规模随机实验。这一波实验使教育研究成为统计学家一个更加激动人心的领域,在更广泛的范围内发掘了实验设计,因果推论和统计方面的许多课程和挑战。重要的是,教育研究和实践几乎总是在多层次的环境中进行,这使得统计数据与具有此结构的其他领域相关,包括社会政策,卫生服务研究和医学临床试验。在本文中,我们首先简要回顾一下导致教育研究新时代的历史,并描述主导现代大规模教育实验的设计特征。然后,我们重点介绍了该领域中的一些关键统计挑战,包括设计的内生性,治疗效果的异质性,不符合治疗分配,调解,可概括性和溢出效应。尽管是次要重点,但我们还着眼于有前途的试验设计,这些设计可以回答更细微的问题,例如用于研究动态治疗方案的SMART设计和用于优化现有治疗成分的因子设计。

更新日期:2020-03-09
down
wechat
bug