TL;DR
This paper explores adaptive learning in cybersecurity training, demonstrating its potential to enhance student engagement and success by tailoring difficulty levels based on individual proficiency, which is a novel approach in this field.
Contribution
It introduces a new adaptive tutor model for cybersecurity training that adjusts difficulty based on real-time student proficiency, filling a gap in current educational practices.
Findings
Adaptive training does not overwhelm students.
Students can access multiple training paths with varying difficulty.
The approach improves student engagement and learning outcomes.
Abstract
This paper presents how learning experience influences students' capability to learn and their motivation for learning. Although each student is different, standard instruction methods do not adapt to individuals. Adaptive learning reverses this practice and attempts to improve the student experience. While adaptive learning is well-established in programming, it is rarely used in cybersecurity education. This paper is one of the first works investigating adaptive learning in security training. First, we analyze the performance of 95 students in 12 training sessions to understand the limitations of the current training practice. Less than half of the students completed the training without displaying a solution, and only in two sessions, all students completed all phases. Then, we simulate how students would proceed in one of the past training sessions if it would offer more paths of…
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