Detecting Unsuccessful Students in Cybersecurity Exercises in Two Different Learning Environments
Valdemar \v{S}v\'abensk\'y, Kristi\'an Tk\'a\v{c}ik, Aubrey Birdwell,, Richard Weiss, Ryan S. Baker, Pavel \v{C}eleda, Jan Vykopal, Jens Mache,, Ankur Chattopadhyay

TL;DR
This paper develops and compares machine learning models using activity data from cybersecurity exercises across two environments to predict students at risk of poor performance, aiding targeted instructor intervention.
Contribution
It introduces automated tools and compares feature engineering and classification approaches for predicting student success in cybersecurity exercises across different learning environments.
Findings
Decision tree classifier achieved highest accuracy and sensitivity.
Activity data effectively predicts student success.
Models can assist instructors in early detection of struggling students.
Abstract
This full paper in the research track evaluates the usage of data logged from cybersecurity exercises in order to predict students who are potentially at risk of performing poorly. Hands-on exercises are essential for learning since they enable students to practice their skills. In cybersecurity, hands-on exercises are often complex and require knowledge of many topics. Therefore, students may miss solutions due to gaps in their knowledge and become frustrated, which impedes their learning. Targeted aid by the instructor helps, but since the instructor's time is limited, efficient ways to detect struggling students are needed. This paper develops automated tools to predict when a student is having difficulty. We formed a dataset with the actions of 313 students from two countries and two learning environments: KYPO CRP and EDURange. These data are used in machine learning algorithms to…
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Taxonomy
TopicsNetwork Security and Intrusion Detection
