Abstract. Tuning stochastic local search algorithms for tackling large instances is difficult due to the large amount of CPU-time that testing algorithm configurations requires on such large instances. We define an experimental protocol that allows tuning an algorithm on small tuning instances and extrapolating from the obtained configurations a para-meter setting that is suited for tackling large instances. The key ele-ment of our experimental protocol is that both the algorithm parameters that need to be scaled to large instances and the stopping time that is employed for the tuning instances are treated as free parameters. The scaling law of parameter values, and the computation time limits on the small instances are then derived through...
This thesis addresses aspects of stochastic algorithms for the solution of global optimisation probl...
Local search algorithms for global optimization often suffer from getting trapped in a local optimum...
This paper formalizes the problem of choosing online the number of explorations in a local search al...
Abstract. Machine learning can be utilized to build models that predict the runtime of search algori...
AbstractAlgorithms for parameter optimization display subthreshold-seeking behavior when the majorit...
Simulated Annealing is a well known local search metaheuristic used for solving computationally hard...
Achieving peak performance from library subroutines usually requires extensive, machine-dependent tu...
On-line parameter adaptation schemes are widely used in metaheuristics. They are sometimes preferred...
The study of Stochastic Local Search (SLS) algorithms is becoming more pivotal these days, due to th...
This paper describes algorithms that learn to improve search performance on large-scale optimization...
Throughout the course of an optimization run, the probability of yielding further improvement become...
This paper proposes uRace, a unified race algorithm for efficient offline parameter tuning of determ...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
Application-specific, parameterized local search algorithms (PLSAs), in which optimization accuracy ...
The best-performing algorithms for many hard problems are highly parameterized. Selecting the best h...
This thesis addresses aspects of stochastic algorithms for the solution of global optimisation probl...
Local search algorithms for global optimization often suffer from getting trapped in a local optimum...
This paper formalizes the problem of choosing online the number of explorations in a local search al...
Abstract. Machine learning can be utilized to build models that predict the runtime of search algori...
AbstractAlgorithms for parameter optimization display subthreshold-seeking behavior when the majorit...
Simulated Annealing is a well known local search metaheuristic used for solving computationally hard...
Achieving peak performance from library subroutines usually requires extensive, machine-dependent tu...
On-line parameter adaptation schemes are widely used in metaheuristics. They are sometimes preferred...
The study of Stochastic Local Search (SLS) algorithms is becoming more pivotal these days, due to th...
This paper describes algorithms that learn to improve search performance on large-scale optimization...
Throughout the course of an optimization run, the probability of yielding further improvement become...
This paper proposes uRace, a unified race algorithm for efficient offline parameter tuning of determ...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
Application-specific, parameterized local search algorithms (PLSAs), in which optimization accuracy ...
The best-performing algorithms for many hard problems are highly parameterized. Selecting the best h...
This thesis addresses aspects of stochastic algorithms for the solution of global optimisation probl...
Local search algorithms for global optimization often suffer from getting trapped in a local optimum...
This paper formalizes the problem of choosing online the number of explorations in a local search al...