Beyond A/B Testing: Sequential Randomization for Developing Interventions in Scaled Digital Learning Environments

T. NeCamp, Josh Gardner, Christopher A. Brooks
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引用次数: 12

Abstract

Randomized experiments ensure robust causal inference that is critical to effective learning analytics research and practice. However, traditional randomized experiments, like A/B tests, are limiting in large scale digital learning environments. While traditional experiments can accurately compare two treatment options, they are less able to inform how to adapt interventions to continually meet learners' diverse needs. In this work, we introduce a trial design for developing adaptive interventions in scaled digital learning environments -- the sequential randomized trial (SRT). With the goal of improving learner experience and developing interventions that benefit all learners at all times, SRTs inform how to sequence, time, and personalize interventions. In this paper, we provide an overview of SRTs, and we illustrate the advantages they hold compared to traditional experiments. We describe a novel SRT run in a large scale data science MOOC. The trial results contextualize how learner engagement can be addressed through culturally-targeted reminder emails. We also provide practical advice for researchers who aim to run their own SRTs to develop adaptive interventions in scaled digital learning environments.
超越A/B测试:在规模化数字学习环境中开发干预措施的顺序随机化
随机实验确保了强大的因果推理,这对有效的学习分析研究和实践至关重要。然而,传统的随机实验,如A/B测试,在大规模的数字学习环境中是有限的。虽然传统的实验可以准确地比较两种治疗方案,但它们不太能够告知如何调整干预措施以不断满足学习者的多样化需求。在这项工作中,我们介绍了一种试验设计,用于在大规模数字学习环境中开发自适应干预措施-顺序随机试验(SRT)。以改善学习者体验和开发干预措施为目标,srt告知如何排序、时间和个性化干预措施。在本文中,我们提供了srt的概述,并说明了它们与传统实验相比所具有的优势。我们描述了一个在大规模数据科学MOOC中运行的新颖SRT。试验结果说明了如何通过有文化针对性的提醒电子邮件来解决学习者参与问题。我们还为旨在运行自己的srt以在大规模数字学习环境中开发适应性干预措施的研究人员提供实用建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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