Population-based heuristics can be effective at optimizing difficult multi-modal problems. However, population size has to be selected correctly to achieve the best results. Searching with a smaller population increases the chances of convergence and the efficient use of function evaluations, but it also induces the risk of premature convergence. Larger populations can reduce this risk but can cause poor efficiency. This paper presents a new method specifically designed to work with very small populations. Computational results show that this new heuristic can achieve the benefits of smaller populations and largely avoid the risk of premature convergence
We present a competiton scheme which dynamically allocates the number of trials given to different s...
In this paper we present greedy methods for selecting a subset of heuristic functions for guiding A*...
Evolutionary algorithms (EAs) are population-based randomized search heuristics that often solve pro...
Minimum Population Search is a new metaheuristic specifically designed for optimization of multi-mod...
Minimum Population Search is a new metaheuristic specifically designed for optimizing multi-modal pr...
Small populations are very desirable for reducing the required computational resources in evolutiona...
This paper identifies five distinct mechanisms by which a population-based algorithm might have an a...
Standard heuristics in Operations Research (such as greedy, tabu search and simulated annealing) wor...
Minimum Population Search is a recently developed metaheuristic for optimization of mono-objective c...
Computer modeling of protein ligand interactions is one of the most important phases in a drug desig...
Computer modeling of protein-ligand interactions is one of the most important phases in a drug desig...
International audienceIn this work we study the effects of population size on selection and performa...
The thesis deals with minimax and single-agent search. Practice shows that in both cases deeper sear...
Heuristic search methods have been applied to a wide variety of optimisation problems. A central ele...
Search is one of the most useful procedures employed in numerous situations such as optimization, ma...
We present a competiton scheme which dynamically allocates the number of trials given to different s...
In this paper we present greedy methods for selecting a subset of heuristic functions for guiding A*...
Evolutionary algorithms (EAs) are population-based randomized search heuristics that often solve pro...
Minimum Population Search is a new metaheuristic specifically designed for optimization of multi-mod...
Minimum Population Search is a new metaheuristic specifically designed for optimizing multi-modal pr...
Small populations are very desirable for reducing the required computational resources in evolutiona...
This paper identifies five distinct mechanisms by which a population-based algorithm might have an a...
Standard heuristics in Operations Research (such as greedy, tabu search and simulated annealing) wor...
Minimum Population Search is a recently developed metaheuristic for optimization of mono-objective c...
Computer modeling of protein ligand interactions is one of the most important phases in a drug desig...
Computer modeling of protein-ligand interactions is one of the most important phases in a drug desig...
International audienceIn this work we study the effects of population size on selection and performa...
The thesis deals with minimax and single-agent search. Practice shows that in both cases deeper sear...
Heuristic search methods have been applied to a wide variety of optimisation problems. A central ele...
Search is one of the most useful procedures employed in numerous situations such as optimization, ma...
We present a competiton scheme which dynamically allocates the number of trials given to different s...
In this paper we present greedy methods for selecting a subset of heuristic functions for guiding A*...
Evolutionary algorithms (EAs) are population-based randomized search heuristics that often solve pro...