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A Two-Phase Learning-Based Swarm Optimizer for Large-Scale Optimization

Rushi Lan, Yu Zhu, Huimin Lu, Zhenbing Liu, Xiaonan Luo

2020IEEE Transactions on Cybernetics79 citationsDOIOpen Access PDF

Abstract

In this article, a simple yet effective method, called a two-phase learning-based swarm optimizer (TPLSO), is proposed for large-scale optimization. Inspired by the cooperative learning behavior in human society, mass learning and elite learning are involved in TPLSO. In the mass learning phase, TPLSO randomly selects three particles to form a study group and then adopts a competitive mechanism to update the members of the study group. Then, we sort all of the particles in the swarm and pick out the elite particles that have better fitness values. In the elite learning phase, the elite particles learn from each other to further search for more promising areas. The theoretical analysis of TPLSO exploration and exploitation abilities is performed and compared with several popular particle swarm optimizers. Comparative experiments on two widely used large-scale benchmark datasets demonstrate that the proposed TPLSO achieves better performance on diverse large-scale problems than several state-of-the-art algorithms.

Topics & Concepts

Particle swarm optimizationBenchmark (surveying)sortComputer scienceSwarm behaviourArtificial intelligenceMulti-swarm optimizationMetaheuristicSimple (philosophy)Machine learningMathematical optimizationEliteSwarm roboticsMechanism (biology)Swarm intelligenceActive learning (machine learning)MathematicsMetaheuristic Optimization Algorithms ResearchNeural Networks and ApplicationsAdvanced Multi-Objective Optimization Algorithms
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