Department of Statistics, University of Washington, Seattle, WA 98195-4322 Department of Biology, University of Washington, Seattle, WA 98195-4322.
CBE Life Sci Educ. 2014 Spring;13(1):41-8. doi: 10.1187/cbe-13-07-0136.
Although researchers in undergraduate science, technology, engineering, and mathematics education are currently using several methods to analyze learning gains from pre- and posttest data, the most commonly used approaches have significant shortcomings. Chief among these is the inability to distinguish whether differences in learning gains are due to the effect of an instructional intervention or to differences in student characteristics when students cannot be assigned to control and treatment groups at random. Using pre- and posttest scores from an introductory biology course, we illustrate how the methods currently in wide use can lead to erroneous conclusions, and how multiple linear regression offers an effective framework for distinguishing the impact of an instructional intervention from the impact of student characteristics on test score gains. In general, we recommend that researchers always use student-level regression models that control for possible differences in student ability and preparation to estimate the effect of any nonrandomized instructional intervention on student performance.
尽管本科科学、技术、工程和数学教育的研究人员目前正在使用几种方法来分析预测试和后测试数据中的学习收益,但最常用的方法存在重大缺陷。其中最主要的是,当学生不能随机分配到对照组和实验组时,无法区分学习收益的差异是由于教学干预的影响还是由于学生特征的差异。我们使用一门入门生物学课程的预测试和后测试分数来说明目前广泛使用的方法如何导致错误的结论,以及多元线性回归如何为区分教学干预的影响和学生特征对考试成绩提高的影响提供有效的框架。总的来说,我们建议研究人员始终使用学生层面的回归模型来控制学生能力和准备方面的可能差异,以估计任何非随机教学干预对学生表现的影响。