Title
Developing Early Detectors of Student Attrition and Wheel Spinning Using Deep Learning
Abstract
The increased usage of computer-based learning platforms and online tools in classrooms presents new opportunities to not only study the underlying constructs involved in the learning process, but also use this information to identify and aid struggling students. Many learning platforms, particularly those driving or supplementing instruction, are only able to provide aid to students who interact with the system. With this in mind, student persistence emerges as a prominent learning construct contributing to students success when learning new material. Conversely, high persistence is not always productive for students, where additional practice does not help the student move toward a state of mastery of the material. In this paper, we apply a transfer learning methodology using deep learning and traditional modeling techniques to study high and low representations of unproductive persistence. We focus on two prominent problems in the fields of educational data mining and learner analytics representing low persistence, characterized as student “stopout,” and unproductive high persistence, operationalized through student “wheel spinning,” in an effort to better understand the relationship between these measures of unproductive persistence (i.e., stopout and wheel spinning) and develop early detectors of these behaviors. We find that models developed to detect each within and across-assignment stopout and wheel spinning are able to learn sets of features that generalize to predict the other. We further observe how these models perform at each learning opportunity within student assignments to identify when interventions may be deployed to best aid students who are likely to exhibit unproductive persistence.
Year
DOI
Venue
2019
10.1109/tlt.2019.2912162
IEEE Transactions on Learning Technologies
Keywords
Field
DocType
Wheels,Spinning,Deep learning,Predictive models,Task analysis,Detectors,Education
Mastery learning,Task analysis,Learning analytics,Computer science,Transfer of training,Transfer of learning,Knowledge management,At-risk students,Mathematics education,Analytics,Educational data mining
Journal
Volume
Issue
ISSN
12
2
1939-1382
Citations 
PageRank 
References 
0
0.34
0
Authors
6
Name
Order
Citations
PageRank
Anthony Botelho1125.69
Ashvini Varatharaj201.35
Thanaporn Patikorn302.37
Diana Doherty411.02
Seth Adjei5196.02
Joseph E. Beck675989.98