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A New Algorithm for Data Clustering Based on Cuckoo Search Optimization

机译:一种基于Cuckoo搜索优化的数据聚类新算法

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This paper presents a new algorithm for data clustering based on the cuckoo search optimization. Cuckoo search is generic and robust for many optimization problems and it has attractive features like easy implementation, stable convergence characteristic and good computational efficiency. The performance of the proposed algorithm was assessed on four different dataset from the UCI Machine Learning Repository and compared with well known and recent algorithms: K-means, particle swarm optimization, gravitational search algorithm, the big bang–big crunch algorithm and the black hole algorithm. The experimental results improve the power of the new method to achieve the best values for three data sets.
机译:本文提出了一种基于Cuckoo搜索优化的数据聚类算法。对于许多优化问题,杜鹃搜索是通用和强大的,它具有易于实现,稳定的收敛特性和良好的计算效率等特点。从UCI机器学习存储库的四个不同数据集中评估了所提出的算法的性能,并与众所周知的和最近的算法进行比较:K-means,粒子群优化,引力搜索算法,大爆炸凝结算法和黑洞算法。实验结果提高了新方法的功率,以实现三种数据集的最佳值。

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