A Bi-criteria Hybrid Genetic Algorithm with Robustness Objective for the Course Timetabling Problem
Citation
AKKAN, Can & Ayla GÜLCÜ. "A Bi-criteria Hybrid Genetic Algorithm with Robustness Objective for the Course Timetabling Problem". PATAT 2016 - Proceedings of the 11th International Conference on the Practice and Theory of Automated Timetabling, (2016):451-456.Abstract
Traditional methods of generating timetables may not yield robust solutions
that may easily be adapted to changing inputs. Incorporating late changes
by making minimum modifications is an important need in many practical
applications of timetabling. Here, we first define a robustness measure for the
International Timetabling Competition 2007 (ITC-2007) Curriculum-Based
Course Timetabling Problem [5], and then try to find a set of good solutions
in terms of both penalty and robustness values. We model the problem as
a bi-criteria optimization problem and solve it by a hybrid Multi-objective
Genetic Algorithm (MOGA), which makes use of hill-climbing and Simulated
Annealing algorithms in addition to the standard Genetic Algorithm (GA)
approach.