Nowadays different approaches are coming forth to tutor students using computers. In this paper, a computer based intelligent tutoring system (ITS) is presented. It projects out a new approach dealing with diagnosis in student modeling which emphasizes on Bayesian networks (for decision making) and item response theory (for adaptive question selection). The advantage of such an approach through Bayesian networks (formal framework of uncertainty) is that this structural model allows substantial simplification when specifying parameters (conditional probabilities) which measures student ability at different levels of granularity. In addition, the probabilistic student model is proved to be more quicker, accurate and efficient. Since most of the tutoring systems are static HTML web pages of class textbooks, our intelligent system can help a student navigate through online course materials and recommended learning goals.
Achi Ifeanyi IsaiahProf. Inyiama Hyacinth ChibuezeAgwu Chukwuemeka Odi
Patil Deepti ReddyM. Sasikumar
Francesco ColaceMassimo De SantoMarcello Iacone