Addressing Common Analytic Challenges to Randomized Experiments in MOOCs: Attrition and Zero-Inflation

Anne Lamb, Jascha Smilack, Andrew D. Ho, J. Reich
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引用次数: 28

Abstract

Massive open online course (MOOC) platforms increasingly allow easily implemented randomized experiments. The heterogeneity of MOOC students, however, leads to two methodological obstacles in analyzing interventions to increase engagement. (1) Many MOOC participation metrics have distributions with substantial positive skew from highly active users as well as zero-inflation from high attrition. (2) High attrition means that in some experimental designs, most users assigned to the treatment never receive it; analyses that do not consider attrition result in "intent-to-treat" (ITT) estimates that underestimate the true effects of interventions. We address these challenges in analyzing an intervention to improve forum participation in the 2014 JusticeX course offered on the edX MOOC platform. We compare the results of four ITT models (OLS, logistic, quantile, and zero-inflated negative binomial regressions) and three "treatment-on-treated" (TOT) models (Wald estimator, 2SLS with a second stage logistic model, and instrumental variables quantile regression). A combination of logistic, quantile, and zero-inflated negative binomial regressions provide the most comprehensive description of the ITT effects. TOT methods then adjust the ITT underestimates. Substantively, we demonstrate that self-assessment questions about forum participation encourage more students to engage in forums and increases the participation of already active students.
解决mooc随机实验的常见分析挑战:损耗与零膨胀
大规模在线开放课程(MOOC)平台越来越容易实现随机实验。然而,MOOC学生的异质性导致在分析提高参与度的干预措施时存在两个方法上的障碍。(1)许多MOOC参与指标的分布在高度活跃的用户中存在显著的正偏态,而在高流失率中存在零通胀。(2)高损耗是指在一些实验设计中,大多数分配到处理的用户从未接受过处理;不考虑损耗的分析结果是“治疗意向”(ITT)估计,低估了干预措施的真正效果。我们通过分析一项干预措施来解决这些挑战,以提高edX MOOC平台上2014年JusticeX课程的论坛参与度。我们比较了四种ITT模型(OLS、logistic、分位数和零膨胀负二项回归)和三种“治疗对治疗”(TOT)模型(Wald估计、2SLS与第二阶段logistic模型和工具变量分位数回归)的结果。逻辑、分位数和零膨胀负二项回归的组合提供了ITT效应的最全面描述。然后,TOT方法调整了ITT的低估。实质上,我们证明了关于论坛参与的自我评估问题鼓励更多的学生参与论坛,并增加了已经活跃的学生的参与。
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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