Abstract
We present a variety of approaches for solving the post enrolment-based course timetabling problem, which was proposed as Track 2 of the 2007 International Timetabling Competition. We approach the problem using local search and constraint programming techniques. We show how to take advantage of a list-colouring relaxation of the problem. Our local search approach won Track 2 of the 2007 competition. Our best constraint programming approach uses an original problem decomposition. Incorporating this into a large neighbourhood search scheme seems promising, and provides motivation for studying complete approaches in further detail.
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This work was supported by Science Foundation Ireland (Grant Number 05/IN/I886).
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Cambazard, H., Hebrard, E., O’Sullivan, B. et al. Local search and constraint programming for the post enrolment-based course timetabling problem. Ann Oper Res 194, 111–135 (2012). https://doi.org/10.1007/s10479-010-0737-7
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DOI: https://doi.org/10.1007/s10479-010-0737-7