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Clustering Algorithm Based on Fruit Fly Optimization

机译:基于果蝇优化的聚类算法

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The swarm intelligence optimization algorithms have been widely applied in the fields of clustering analysis, such as ant colony algorithm, artificial immune algorithm and so on. Inspired by the idea of fruit fly optimization algorithms, this paper presents Fruit Fly Optimization Clustering Algorithm (FOCA) based on fruit fly optimization. The algorithm extends the space which fruit fly from two-dimension to three, in order to find the global optimum in each iteration. Besides, for the purpose of getting the optimize clusters centers, each fruit fly flies step by step, and every flight is a stochastic search in its own region. Compared with the other clustering algorithms of swarm intelligence, the proposed algorithm is simpler and with fewer parameters. The experimental results demonstrate that our algorithm outperforms some of state-of-the-art algorithms regarding to the accuracy and convergence time.
机译:群体智能优化算法已广泛应用于聚类分析领域,如蚁群算法,人工免疫算法等。通过果蝇优化算法的启发,本文介绍了基于水果飞行优化的果蝇优化聚类算法(FOCA)。该算法将果蝇从两维的空间扩展到三个,以便在每次迭代中找到全局最佳。此外,为了获得优化集群中心,每个果蝇逐步飞行,每次飞行都是在自己的地区的随机搜索。与其他群体智能的聚类算法相比,所提出的算法更简单,参数较少。实验结果表明,我们的算法优于关于精度和收敛时间的一些最先进的算法。

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