Understanding Student Engagement in Large-Scale Open Online Courses: A Machine Learning Facilitated Analysis of Student’s Reflections in 18 Highly Rated MOOCs
Author(s)
Hew, Khe Foon; The University of Hong KongQiao, Chen; The University of Hong Kong
Tang, Ying; The University of Hong Kong
Contributor(s)
NilKeywords
Education; Open Learning; Online LearningMOOCs, massive open online courses, engagement, text mining, machine learning
Full record
Show full item recordOnline Access
http://www.irrodl.org/index.php/irrodl/article/view/3596Abstract
Although massive open online courses (MOOCs) have attracted much worldwide attention, scholars still understand little about the specific elements that students find engaging in these large open courses. This study offers a new original contribution by using a machine learning classifier to analyze 24,612 reflective sentences posted by 5,884 students, who participated in one or more of 18 highly rated MOOCs. Highly rated MOOCs were sampled because they exemplify good practices or teaching strategies. We selected highly rated MOOCs from Coursetalk, an open user-driven aggregator and discovery website that allows students to search and review various MOOCs. We defined a highly rated MOOC as a free online course that received an overall five-star course quality rating, and received at least 50 reviews from different learners within a specific subject area. We described six specific themes found across the entire data corpus: (a) structure and pace, (b) video, (c) instructor, (d) content and resources, (e) interaction and support, and (f) assignment and assessment. The findings of this study provide valuable insight into factors that students find engaging in large-scale open online courses.Date
2018-07-11Type
info:eu-repo/semantics/articleIdentifier
oai:www.irrodl.org:article/3596http://www.irrodl.org/index.php/irrodl/article/view/3596
10.19173/irrodl.v19i3.3596