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Estimating the Evolution Direction of Populations to Improve Genetic Algorithms

机译:估计种群的进化方向以改进遗传算法

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Meta-heuristics have been successfully used to solve a wide variety of problems. However, one issue many techniques have is their risk of being trapped into local optima, or to create a limited variety of solutions (problem known as "population drift"). During recent and past years, different kinds of techniques have been proposed to deal with population drift, for example hybridizing genetic algorithms with local search techniques or using niche techniques. This paper proposes a technique, based on Singular Value Decomposition (SVD), to enhance Genetic Algorithms (GAs) population diversity. SVD helps to estimate the evolution direction and drive next generations towards orthogonal dimensions. The proposed SVD-based GA has been evaluated on 11 benchmark problems and compared with a simple GA and a GA with a distance-crowding schema. Results indicate that SVD-based GA achieves significantly better solutions and exhibits a quicker convergence than the alternative techniques.
机译:元启发式方法已成功用于解决各种问题。但是,许多技术存在的一个问题是它们有陷入局部最佳状态或创建有限种类的解决方案的风险(称为“人口漂移”的问题)。在最近和过去的几年中,已经提出了各种技术来应对人口漂移,例如,将遗传算法与局部搜索技术或利基技术相结合。本文提出了一种基于奇异值分解(SVD)的技术来增强遗传算法(GAs)种群多样性。 SVD有助于估计进化方向,并推动下一代朝正交方向发展。拟议的基于SVD的GA已针对11个基准问题进行了评估,并与简单GA和具有距离拥挤模式的GA进行了比较。结果表明,与其他技术相比,基于SVD的GA实现了更好的解决方案,并且收敛速度更快。

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