THE ROLE OF MASTERY LEARNING IN AN INTELLIGENT TUTORING SYSTEM: PRINCIPAL STRATIFICATION ON A LATENT VARIABLE

成果类型:
Article
署名作者:
Sales, Adam C.; Pane, John F.
署名单位:
University of Texas System; University of Texas Austin; RAND Corporation
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/18-AOAS1196
发表日期:
2019
页码:
420-443
关键词:
bayesian-inference
摘要:
Students in Algebra I classrooms typically learn at different rates and struggle at different points in the curriculum-a common challenge for math teachers. Cognitive Tutor Algebra I (CTA1), an educational computer program, addresses such student heterogeneity via what they term mastery learning, where students progress from one section of the curriculum to the next by demonstrating appropriate mastery at each stage. However, when students are unable to master a section's skills even after trying many problems, they are automatically promoted to the next section anyway. Does promotion without mastery impair the program's effectiveness? At least in certain domains, CTA1 was recently shown to improve student learning on average in a randomized effectiveness study. This paper uses student log data from that study in a continuous principal stratification model to estimate the relationship between students' potential mastery and the CTA1 treatment effect. In contrast to extant principal stratification applications, a student's propensity to master worked sections here is never directly observed. Consequently we embed an item-response model, which measures students' potential mastery, within the larger principal stratification model. We find that the tutor may, in fact, be more effective for students who are more frequently promoted (despite unsuccessfully completing sections of the material). However, since these students are distinctive in their educational strength (as well as in other respects), it remains unclear whether this enhanced effectiveness can be directly attributed to aspects of the mastery learning program.