Fireflies can find groups for data clustering

Kazunori Mizuno, Shiho Takamatsu, Toshitsugu Shimoyama, S. Nishihara
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引用次数: 5

Abstract

Data clustering is one of the most important techniques in data analysis. Although the k-means clustering method has been widely used due to its simplicity and easiness of implementation, the performance of the method depends on the initial solution, having the drawback of getting locally optimal solutions. In this paper, to solve this issue, we have proposed a data clustering method based on the firefly algorithm combined with the k-means clustering method for data clustering. In our method, the firefly algorithm first attempts to find the quasioptimal solution. Then, given the solution obtained by the firefly algorithm as an initial solution, k-means method make data clustering converge to a final solution, or final clustered data set. We demonstrate that the proposed method can be effective for data clustering using some popular benchmark data sets.
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萤火虫可以找到数据聚类的组
数据聚类是数据分析中的重要技术之一。虽然k-means聚类方法因其简单易实现而得到广泛应用,但该方法的性能依赖于初始解,存在不能得到局部最优解的缺点。本文针对这一问题,提出了一种基于萤火虫算法结合k-means聚类方法进行数据聚类的数据聚类方法。在我们的方法中,萤火虫算法首先尝试找到拟最优解。然后,将萤火虫算法得到的解作为初始解,k-means方法使数据聚类收敛于最终解,即最终聚类数据集。我们用一些流行的基准数据集证明了该方法对数据聚类是有效的。
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