DBE-KT22: A Knowledge Tracing Dataset Based on Online Student Evaluation

Abdelrahman, Ghodai, Abdelfattah, Sherif, Wang, Qing, Lin, Yu

arXiv.org Artificial Intelligence 

The recent global pandemic further amplified the impact of online education as an effective alternative that could overcome physical distancing restrictions imposed on students and teaching staff in schools and university campuses. Nevertheless, one of the significant challenges that need to be addressed in online education systems is the ability to effectively trace a student's learning progress, similar to what a human teacher would do in the classroom. Human teachers rely on their intuition and experience to estimate a student's knowledge state and tailor the learning process accordingly. Acquiring such ability would enable online education systems to archive many vital education objectives, including customized curriculum generation, learning materials recommendation, exercise recommendation, automatic evaluation, or learning feedback generation. Achieving such objectives would facilitate automating the teaching process and pave the way for transforming the current online education systems into Intelligent Tutoring Systems (ITS). An ITS not only automates the teaching procedure using computer systems (e.g., web applications) but also handles supporting tasks such as customizing the learning experience and providing guidance and feedback to the students [1]. The Knowledge Tracing (KT) problem formulates the challenge of tracing a student's knowledge state based on their exercise answering history [2, 3]. In particular, the exercise answering history could be represented as a sequence of question-answer pairs, and the task of a solving computational model would be to predict the likelihood of correctly answering the following questions. Figure 1 depicts a probabilistic graphical model for a KT scenario.

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