Authors
Edmund K Burke, Adam J Eckersley, Barry McCollum, Sanja Petrovic, Rong Qu
Publication date
2010/10/1
Journal
European Journal of Operational Research
Volume
206
Issue
1
Pages
46-53
Publisher
North-Holland
Description
In this paper, we investigate variable neighbourhood search (VNS) approaches for the university examination timetabling problem. In addition to a basic VNS method, we introduce variants of the technique with different initialisation methods including a biased VNS and its hybridisation with a Genetic Algorithm. A number of different neighbourhood structures are analysed. It is demonstrated that the proposed technique is able to produce high quality solutions across a wide range of benchmark problem instances. In particular, we demonstrate that the Genetic Algorithm, which intelligently selects appropriate neighbourhoods to use within the biased VNS, produces the best known results in the literature, in terms of solution quality, on some of the benchmark instances. However, it requires relatively large amount of computational time. Possible extensions to this overall approach are also discussed.
Total citations
20092010201120122013201420152016201720182019202020212022202320241212131717181918181614109985
Scholar articles
EK Burke, AJ Eckersley, B McCollum, S Petrovic, R Qu - European Journal of Operational Research, 2010