Evaluating genetic algorithms through the approximability hierarchy
Alba Muñoz del Río, Fernando Rubio
Abstract
Optimization problems frequently appear in any scientific domain. Most of the times, the corresponding decision problem turns out to be NP-hard, and in these cases genetic algorithms are often used to obtain approximated solutions. However, the difficulty to approximate different NP-hard problems can vary a lot. In this paper, we analyze the usefulness of using genetic algorithms depending on the approximation class the problem belongs to. In particular, we use the standard approximability hierarchy, showing that genetic algorithms are especially useful for the most pessimistic classes of the hierarchy.
Topics & Concepts
HierarchyComputer scienceAlgorithmGenetic algorithmMathematicsMathematical optimizationCombinatoricsEconomicsMarket economyMetaheuristic Optimization Algorithms ResearchAdvanced Multi-Objective Optimization AlgorithmsOptimization and Search Problems