The development of intelligent tutoring system has greatly influenced the way students learn and practice, which increases their learning efficiency. The intelligent tutoring system must model learners' mastery of the knowledge before providing feedback and advices to learners, so one class of algorithm called "knowledge tracing" is surely important. This paper proposed Deep Self-Attentive Knowledge Tracing (DSAKT) based on the data of PTA, an online assessment system used by students in many universities in China, to help these students learn more efficiently. Experimentation on the data of PTA shows that DSAKT outperforms the other models for knowledge tracing an improvement of AUC by 2.1% on average, and this model also has a good performance on the ASSIST dataset.
翻译:智能辅导系统的发展极大地影响了学生的学习和实践方式,提高了他们的学习效率。智能辅导系统必须在向学生提供反馈和建议之前对学习者掌握知识进行模拟,因此,一种叫作“知识追踪”的算法当然很重要。 本文根据中国许多大学学生使用的在线评估系统PTA的数据提出了“深自我智能知识追踪 ” ( DSAKT), 这个在线评估系统可以帮助这些学生更有效地学习。 对PTA数据的实验表明,DSAKT比其他知识追踪模型(AUC平均改进2.1% ), 这一模型在ASSIST数据集上也表现良好。