Many introductory programming environments generate a large amount of log data, but making insights from these data accessible to instructors remains a challenge. This research demonstrates that student outcomes can be accurately predicted from student program states at various time points throughout the course, and integrates the resulting predictive models into an instructor dashboard. The effectiveness of the dashboard is evaluated by measuring how well the dashboard analytics correctly suggest that the instructor help students classified as most in need. Finally, we describe a method of matching low-performing students with high-performing peer tutors, and show that the inclusion of peer tutors not only increases the amount of help given, but the consistency of help availability as well.
CITATION STYLE
Diana, N., Grover, S., Eagle, M., Bienkowski, M., Stamper, J., & Basu, S. (2017). An instructor dashboard for real-time analytics in interactive programming assignments. In ACM International Conference Proceeding Series (pp. 272–279). Association for Computing Machinery. https://doi.org/10.1145/3027385.3027441
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