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Modified Chaotic Bee Colony Optimization (MCBCO) algorithm for data clustering

机译:修改混沌蜜蜂殖民地优化(MCBCO)数据聚类算法

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Results of the heuristic search-based optimization algorithms largely depend on the initial guess. When the initial guess is closer to the optimal result, then the algorithm converges faster. But for large datasets, the probability of getting this closer guess is difficult. In this paper, a Modified Chaotic Bee Colony Optimization (MCBCO) algorithm is proposed for data clustering. It is capable to explore the solution space in all directions, despite of initial guesses. The chaotic bees that are created using chaotic sequences enable the algorithm to do this. It uses steady state selection tactic for better exploration. The algorithm also uses Gaussian mutation for further exploitations in the solution. The simulation results and analysis reflects that the algorithm is competent for the data clustering problem.
机译:启发式搜索的优化算法的结果很大程度上取决于初始猜测。 当初始猜测更接近最佳结果时,算法会收敛更快。 但对于大型数据集来说,难以实现更仔细的猜测。 本文提出了一种修改的混沌蜜蜂菌落优化(MCBCO)算法用于数据聚类。 尽管尽管有初始猜测,它能够在所有方向上探索解决方案空间。 使用混沌序列创建的混沌蜜蜂使算法能够执行此操作。 它使用稳态选择策略进行更好的探索。 该算法还使用高斯突变进行解决方案中的进一步开发。 仿真结果和分析反映了该算法能够获得数据聚类问题的能力。

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