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A Review of Population-Based Metaheuristics for Large-Scale Black-Box Global Optimization—Part II

Mohammad Nabi Omidvar, Xiaodong Li, Xin Yao

2021IEEE Transactions on Evolutionary Computation84 citationsDOIOpen Access PDF

Abstract

This article is the second part of a two-part survey series on large-scale global optimization. The first part covered two major algorithmic approaches to large-scale optimization, namely, decomposition methods and hybridization methods, such as memetic algorithms and local search. In this part, we focus on sampling and variation operators, approximation and surrogate modeling, initialization methods, and parallelization. We also cover a range of problem areas in relation to large-scale global optimization, such as multiobjective optimization, constraint handling, overlapping components, the component imbalance issue and benchmarks, and applications. The article also includes a discussion on pitfalls and challenges of the current research and identifies several potential areas of future research.

Topics & Concepts

MetaheuristicComputer scienceScale (ratio)Mathematical optimizationBlack boxPopulationMathematicsArtificial intelligencePhysicsMedicineQuantum mechanicsEnvironmental healthMetaheuristic Optimization Algorithms ResearchAdvanced Multi-Objective Optimization AlgorithmsEvolutionary Algorithms and Applications
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