2019
DOI: 10.48550/arxiv.1908.08011
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A Fast and Efficient Stochastic Opposition-Based Learning for Differential Evolution in Numerical Optimization

Abstract: A new variant of stochastic opposition-based learning (OBL) is proposed in this paper. OBL is a relatively new machine learning concept, which consists of simultaneously calculating an original solution and its opposite to accelerate the convergence of soft computing algorithms. Recently a new opposition-based differential evolution (ODE) variant called BetaCODE was proposed as a combination of differential evolution and a new stochastic OBL variant called BetaCOBL. BetaCOBL is capable of flexibly adjusting th… Show more

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