Author:
Aguiar Everaldo,Ambrose G. Alex Ambrose,Chawla Nitesh V.,Goodrich Victoria,Brockman Jay
Abstract
As providers of higher education begin to harness the power of big data analytics, one very fitting application for these new techniques is that of predicting student attrition. The ability to pinpoint students who might soon decide to drop out, or who may be following a suboptimal path to success, allows those in charge to not only understand the causes for this undesired outcome, but it also provides room for the development of early intervention systems. While making such inferences based on academic performance data alone is certainly possible, we claim that in many cases there is no substantial correlation between how well a student performs and his or her decision to withdraw. This is especially true when the overall set of students has a relatively similar academic performance. To address this issue, we derive measurements of engagement from students' electronic portfolios and show how these features can be effectively used to augment the quality of predictions.
Publisher
Society for Learning Analytics Research
Subject
Computer Science Applications,Education
Cited by
26 articles.
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