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A New Algorithm for Fuzzy Clustering Able to Find the Optimal Number of Clusters

机译:一种新的模糊聚类算法,能够找到最佳簇数

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Tackling, within a classification task, to the problem of inaccuracy explains the development of new theories that offer a formal treatment of imprecise information, especially the theory of fuzzy sets who suggested a new approach taking advantage of the concept of membership function. Nevertheless, clustering algorithms still show limits, particularly for the estimation of the number of clusters. In this paper, through a state of the art of the main fuzzy classification algorithms, we introduce a new algorithm, called Fuzzy-MSOM. The latter aims at palliating to drawback of the determination of the suitable number of clusters in a given data set. Thus, the clustering process is carried out through a multi-level approach. Through the use of fuzzy clustering validity indices, Fuzzy-MSOM overcomes the problem of the estimation of clusters number. The experimental result shows that the proposed clustering technique provides better results compared to the previous algorithms.
机译:在分类任务中处理不准确的问题解释了新的理论的发展,这些理论提供了对不精确信息的正式治疗,特别是模糊套装理论,谁建议利用会员函数概念的新方法。 尽管如此,聚类算法仍然显示限制,特别是对于估计簇的数量。 本文通过主模糊分类算法的技术,我们介绍了一种名为Fuzzy-MSOM的新算法。 后者旨在借鉴给定数据集中的合适数量的簇的缺点。 因此,聚类过程通过多级方法进行。 通过使用模糊聚类有效性指标,模糊 - MSOM克服了群集数量的估计问题。 实验结果表明,与先前的算法相比,所提出的聚类技术提供了更好的结果。

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