Automated generation of constructive ordering heuristics for educational timetabling

Construction heuristics play an important role in solving combinatorial optimization problems. These heuristics are usually used to create an initial solution to the problem which is improved using optimization techniques such as metaheuristics. For examination timetabling and university course timetabling problems essentially graph colouring heuristics have been used for this purpose. The process of deriving heuristics manually for educational timetabling is a time consuming task. Furthermore, according to the no free lunch theorem different heuristics will perform well for different problems and problem instances. Hence, automating the induction of construction heuristics will reduce the man hours involved in creating such heuristics, allow for the derivation of problem specific heuristics and possibly result in the derivation of heuristics that humans have not thought of. This paper presents generation construction hyper-heuristics for educational timetabling. The study investigates the automatic induction of two types of construction heuristics, namely, arithmetic heuristics and hierarchical heuristics. Genetic programming is used to evolve arithmetic heuristics. Genetic programming, genetic algorithms and the generation of random heuristic combinations is examined for the generation of hierarchical heuristics. The hyper-heuristics generating both types of heuristics are applied to the examination timetabling and the curriculum based university course timetabling problems. The evolved heuristics were found to perform much better than the existing graph colouring heuristics used for this domain. Furthermore, it was found that the while the arithmetic heuristics were more effective for the examination timetabling problem, the hierarchical heuristics produced better results than the arithmetic heuristics for the curriculum based course timetabling problem. Genetic algorithms proved to be the most effective at inducing hierarchical heuristics.

[1]  Ender Özcan,et al.  Policy matrix evolution for generation of heuristics , 2011, GECCO '11.

[2]  Graham Kendall,et al.  A Genetic Programming Hyper-Heuristic Approach for Evolving 2-D Strip Packing Heuristics , 2010, IEEE Transactions on Evolutionary Computation.

[3]  Matthew R. Hyde,et al.  A Genetic Programming Hyper-Heuristic Approach for Evolving Two Dimensional Strip Packing Heuristics , 2009 .

[4]  Michel Gendreau,et al.  Hyper-heuristics: a survey of the state of the art , 2013, J. Oper. Res. Soc..

[5]  Peter A. Whigham,et al.  Grammar-based Genetic Programming: a survey , 2010, Genetic Programming and Evolvable Machines.

[6]  John R. Koza,et al.  Genetic programming - on the programming of computers by means of natural selection , 1993, Complex adaptive systems.

[7]  Riccardo Poli,et al.  Evolving timetabling heuristics using a grammar-based genetic programming hyper-heuristic framework , 2009, Memetic Comput..

[8]  Emma Hart,et al.  A Combined Generative and Selective Hyper-heuristic for the Vehicle Routing Problem , 2016, GECCO.

[9]  Nelishia Pillay,et al.  Evolving hyper-heuristics for the uncapacitated examination timetabling problem , 2012, J. Oper. Res. Soc..

[10]  Michael O'Neill,et al.  Grammatical evolution - evolutionary automatic programming in an arbitrary language , 2003, Genetic programming.

[11]  Ben Paechter,et al.  Setting the Research Agenda in Automated Timetabling: The Second International Timetabling Competition , 2010, INFORMS J. Comput..

[12]  Ender Özcan,et al.  A genetic programming hyper-heuristic for the multidimensional knapsack problem , 2014, Kybernetes.

[13]  Edmund K. Burke,et al.  A survey of search methodologies and automated system development for examination timetabling , 2009, J. Sched..

[14]  Mengjie Zhang,et al.  Automated Design of Production Scheduling Heuristics: A Review , 2016, IEEE Transactions on Evolutionary Computation.

[15]  Sanja Petrovic,et al.  A graph-based hyper-heuristic for educational timetabling problems , 2007, Eur. J. Oper. Res..

[16]  Matthew R. Hyde A genetic programming hyper-heuristic approach to automated packing , 2010 .