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A faster algorithm for calculating hypervolume
1K
Citations
20
References
2006
Year
Numerical AnalysisArtificial IntelligenceLarge-scale Global OptimizationEngineeringMachine LearningAlgorithm ConfigurationEvolutionary AlgorithmsEmpirical AlgorithmicsEvolutionary Multimodal OptimizationHyperparameter EstimationNumerical ComputationData ScienceValidated NumericsNumerical SimulationParallel ComputingComputational GeometryApproximation TheoryFaster AlgorithmComputer EngineeringInverse ProblemsComputer ScienceDiversity MechanismVolume RenderingComputational ScienceExact Hypervolume Algorithms
We present an algorithm for calculating hypervolume exactly, the Hypervolume by Slicing Objectives (HSO) algorithm, that is faster than any that has previously been published. HSO processes objectives instead of points, an idea that has been considered before but that has never been properly evaluated in the literature. We show that both previously studied exact hypervolume algorithms are exponential in at least the number of objectives and that although HSO is also exponential in the number of objectives in the worst case, it runs in significantly less time, i.e., two to three orders of magnitude less for randomly generated and benchmark data in three to eight objectives. Thus, HSO increases the utility of hypervolume, both as a metric for general optimization algorithms and as a diversity mechanism for evolutionary algorithms.
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