TY - GEN
T1 - Explaining Student Behavior at Scale
T2 - 3rd Annual ACM Conference on Learning at Scale, L@S 2016
AU - Van der Sluis, Frans
AU - Ginn, Jasper
AU - Van der Zee, Tim
PY - 2016/4/25
Y1 - 2016/4/25
N2 - Understanding why and how students interact with educational videos is essential to further improve the quality of Massive Online Open Courses (MOOCs). In this paper, we look at the complexity of videos to explain two related aspects of student behavior: the dwelling time (how much time students spend watching a video) and the dwelling rate (how much of the video they actually see). Building on a strong tradition of psycholinguistics, we formalize a definition for information complexity in videos. Furthermore, building on recent advancements in time-on-task measures we formalize dwelling time and dwelling rate based on click-stream trace data. The resulting computational model of video complexity explains 22.44% of the variance in the dwelling rate for students that finish watching a paragraph of a video. Video complexity and student dwelling show a polynomial relationship, where both low and high complexity increases dwelling. These results indicate why students spend more time watching (and possibly contemplating about) a video. Furthermore, they show that even fairly straightforward proxies of student behavior such as dwelling can already have multiple interpretations; illustrating the challenge of sense-making from learning analytics.
AB - Understanding why and how students interact with educational videos is essential to further improve the quality of Massive Online Open Courses (MOOCs). In this paper, we look at the complexity of videos to explain two related aspects of student behavior: the dwelling time (how much time students spend watching a video) and the dwelling rate (how much of the video they actually see). Building on a strong tradition of psycholinguistics, we formalize a definition for information complexity in videos. Furthermore, building on recent advancements in time-on-task measures we formalize dwelling time and dwelling rate based on click-stream trace data. The resulting computational model of video complexity explains 22.44% of the variance in the dwelling rate for students that finish watching a paragraph of a video. Video complexity and student dwelling show a polynomial relationship, where both low and high complexity increases dwelling. These results indicate why students spend more time watching (and possibly contemplating about) a video. Furthermore, they show that even fairly straightforward proxies of student behavior such as dwelling can already have multiple interpretations; illustrating the challenge of sense-making from learning analytics.
KW - dwelling time, information complexity, learning analytics, moocs, student behavior., video
U2 - 10.1145/2876034.2876051
DO - 10.1145/2876034.2876051
M3 - Article in proceedings
SN - 978-1-4503-3726-7
T3 - L@S '16
SP - 51
EP - 60
BT - Proceedings of the Third (2016) ACM Conference on Learning @ Scale
PB - ACM
CY - New York, NY, USA
Y2 - 25 April 2016 through 26 April 2016
ER -