Title of article :
A Deep-Belief Network Approach for Course Scheduling
Author/Authors :
Rashidi, Hassan Department of Computer Science - Faculty of Statistics - Mathematics and Computer Science - Allameh Tabataba’i University, Tehran , Hassanpour, Maryam Department of Computer Engineering - Islamic Qazvin Azad University, Qazvin
Abstract :
The scheduling of academic courses is a problem in which a weekly schedule is
produced for educational purposes. Many different types of scheduling problems exist
at various universities in accordance with their laws, needs, and constraints. These
problems fall into the category of NP-hard problems and are incredibly complex. In this
paper, an intelligent system for scheduling courses using the Deep-Belief Network
(DBN) is proposed. The reason why the proposed system is intelligent is that it can learn
the constraints, inputs, and other necessary parameters in one step by receiving the
inputs as well as the training needed by the deep-belief network. The deep-belief
network used has one output layer, four hidden layers, and four input layers. The
experimental results of this research show that the deep-belief network proposed for the scheduling of academic courses provides a better score, less error, and execution time compared with Sequence-Based Selection Hyper-Heuristic (SSHH) approach.
Keywords :
Scheduling , Course Scheduling , Network Deep-Belief , Learning Ability
Journal title :
Journal of Applied Research on Industrial Engineering