Adaptive experiments can increase the chance that current students obtain better outcomes from a field experiment of an instructional intervention. In such experiments, the probability of assigning students to conditions changes while more data is being collected, so students can be assigned to interventions that are likely to perform better. Digital educational environments lower the barrier to conducting such adaptive experiments, but they are rarely applied in education. One reason might be that researchers have access to few real-world case studies that illustrate the advantages and disadvantages of these experiments in a specific context. We evaluate the effect of homework email reminders in students by conducting an adaptive experiment using the Thompson Sampling algorithm and compare it to a traditional uniform random experiment. We present this as a case study on how to conduct such experiments, and we raise a range of open questions about the conditions under which adaptive randomized experiments may be more or less useful.
翻译:适应性实验可以增加当前学生从教学干预的实地实验中获得更好结果的机会。 在这种实验中,在收集更多的数据的同时,将学生分配到条件变化的概率,这样学生就可以被分配到可能表现较好的干预领域。数字教育环境降低了进行这种适应性实验的障碍,但很少应用于教育领域。一个原因可能是研究人员能够利用几个真实世界的案例研究来说明这些实验在特定情况下的优缺点。我们通过使用Thompson抽样算法进行适应性实验来评估家庭作业电子邮件提醒对学生的影响,并将之与传统的统一随机实验进行比较。我们将此作为关于如何进行这种实验的案例研究提出一系列开放的问题,说明适应性随机实验在何种条件下可能或多或少有用。