Search Space Sampling by Simulated Annealing for Identifying Robust Solutions in Course Timetabling
Citation
AKKAN, Can, Ayla GÜLCÜ & Zeki KUŞ. "Search Space Sampling by Simulated Annealing for Identifying Robust Solutions in Course Timetabling". 2020 IEEE Congress on Evolutionary Computation, CEC 2020 - Conference Proceedings, 2020.Abstract
For many combinatorial optimization problems, it
is important to identify solutions that can be repaired without
degrading solution quality in case changes in the data associated
with the constraints make the initial solution infeasible, while
ensuring that the new solution is not too different from the
initial one. We propose a novel approach for finding such
robust solutions based on a sample of solutions picked from the
search space traversed by a simulated annealing algorithm. The
sampled solutions are used to form a network of solutions. To
explore the practical performance of this approach, we solve
the widely studied curriculum-based course timetabling problem
of the International Timetabling Competition 2007. With these
benchmark instances, and sets of randomly generated disruption
scenarios, we analyze the performance of some network-based
estimators and show that the diversity of its neighbors is a
significant indicator of a solution’s robustness.