Learning Analytics (LA) is a recent research branch that refers to methods for measuring, collecting,
analyzing, and reporting learners’ data, in order to better understand and optimize the processes and the
environments. Knowledge Tracing (KT) deals with the modeling of the evolution, during the time, of
the students’ learning process. Particularly its aim is to predict students’ outcomes in order to avoid
failures and to support both students and teachers. Recently, KT has been tackled by exploiting Deep
Learning (DL) models and generating a new, ongoing, research line that is known as Deep Knowledge
Tracing (DKT). This was made possible by the digitalization process that has simplified the gathering
of educational data from many different sources such as online learning platforms, intelligent objects,
and mainstream IT-based systems for education. DKT predicts the student’s performances by using
the information embedded in the collected data. Moreover, it has been shown to be able to outperform
the state-of-the-art models for KT. In this paper, we briefly describe the most promising DL models, by
focusing on their prominent contribution in solving the KT task