University Course Timetabling using Bayesian based Optimization Algorithm

dc.contributor.authorDouglas Kunda
dc.contributor.authorAlinaswe Siame
dc.date.accessioned2025-12-02T07:34:30Z
dc.date.issued2018
dc.descriptionRESEARCH PAPERS AND JOURNAL ARTICLES
dc.description.abstractThe timetabling problem has traditionally been treated as a mathematical optimization, heuristic, or human-machine interactive problem. The timetabling problem comprise of hard and soft constraints. Hard constraints must be satisfied in order to generate feasible solutions. Soft constraints are sometimes referred as preferences that can be contravened if necessary. In this research, we present is as both a mathematical and a human-machine problem that requires acceptable and controlled human input, then the algorithm gives options available without conflicting the hard constraints. In short, this research allows the human agents to address the soft-constraints as the algorithm works on the hard constraints, as well as the algorithm being able to learn the soft constraints over time. Simulation research was used to investigate the time tabling problem. Our proposed model employs the use a naïve Bayesian Algorithm, to learn preferred days and timings by lecturers and use them to resolve the soft constraints
dc.description.sponsorshipZCAS UNIVERSITY
dc.identifier.citationHARVARD REFRENCING
dc.identifier.urihttp://dspace.zcas.edu.zm/handle/123456789/123
dc.language.isoen_US
dc.subjectAlgorithms
dc.subjectUniversity course Timetabling/Scheduling
dc.subjectConstraints
dc.subjectBayesian decision approach
dc.subjectLearning algorithm
dc.titleUniversity Course Timetabling using Bayesian based Optimization Algorithm
dc.typeArticle

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