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Large-Scale Evolutionary Multiobjective Optimization Assisted by Directed Sampling

Shufen Qin, Chaoli Sun, Yaochu Jin, Ying Tan, Jonathan E. Fieldsend

2021IEEE Transactions on Evolutionary Computation186 citationsDOI

Abstract

It is particularly challenging for evolutionary algorithms to quickly converge to the Pareto front in large-scale multiobjective optimization. To tackle this problem, this article proposes a large-scale multiobjective evolutionary algorithm assisted by some selected individuals generated by directed sampling (DS). At each generation, a set of individuals closer to the ideal point is chosen for performing a DS in the decision space, and those nondominated ones of the sampled solutions are used to assist the reproduction to improve the convergence in evolutionary large-scale multiobjective optimization. In addition, elitist nondominated sorting is adopted complementarily for environmental selection with a reference vector-based method in order to maintain diversity of the population. Our experimental results show that the proposed algorithm is highly competitive on large-scale multiobjective optimization test problems with up to 5000 decision variables compared to five state-of-the-art multiobjective evolutionary algorithms.

Topics & Concepts

Multi-objective optimizationEvolutionary algorithmComputer scienceEvolutionary computationScale (ratio)Mathematical optimizationSampling (signal processing)MathematicsArtificial intelligenceFilter (signal processing)Quantum mechanicsPhysicsComputer visionAdvanced Multi-Objective Optimization AlgorithmsMetaheuristic Optimization Algorithms ResearchEvolutionary Algorithms and Applications