Massive Open Online Courses (MOOCs) collect valuable data on student learning behavior; essentially complete records of al student interactions in a self-contained learning environment, with the benefit of large sample sizes. […]
• […] 76% of all participants were browsers who collectively accounted for only 8% of time spent in the course, whereas, the 7% certificate-earning participants averaged 100 hours each and collectively accounted for 60% of total time.
• Students spent the most time per week interacting with lecture videos and homework, followed by discussion forums and online laboratories;
Via Peter B. Sloep
The article analyses the behaviour of some 150,000 registrants for the inaugural edX course — 6.002x: Circuits and Electronics, which was offered in the spring of 2012. The analysis is based on the log files for the course, constituting an exemplary case of the application of learning analytics in action (although the authors don’t use that term at all). It consists of two parts. First, the authors take the data of all registrants into account, later to focus on those relatively few (about 10,000) who managed to earn a course certificate.
Overall, this is an interesting and useful study. I have two minor qualms with it. First, the analysis focuses on those registrants who passed the exam and earned a certificate. Although the 10,000 students who managed to do this is a sizable number, it pales with the 150,000 who registred in the first place. Second, and as far as I am concerned more importantly, no attempts is made to frame the discussion in the context of a particular learning theory. However, these qualms do not detract from the value of this study, it deserves to be widely read, particularly by people who are engaged in learning analytics (who might miss it as that term is not used). @pbsloep
(see for a more extensive discussion of the article my blog post at http://pbsloep.blogspot.nl/2014/04/who-does-what-in-massive-open-online.html)