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Fuzzy Shared Nearest Neighbor Clustering

机译:模糊共享最近邻聚类

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摘要

Shared nearest neighbor (SNN) clustering algorithm is a robust graph-based, efficient clustering method that could handle high-dimensional data. The SNN clustering works well when the data consist of clusters that are of diverse in shapes, densities, and sizes but assignment of the data points lying in the boundary regions of overlapping clusters is not accurate. In order to overcome this problem, we have presented an extension of shared nearest neighbor algorithm that have better capability of handling the data points lying in the boundary regions specifically for overlapping cluster by means of fuzzy concept. Extensive experiments were carried out to compare the proposed approach fuzzy shared nearest neighbor clustering (FSNN) with existing clustering methods K-means, Fuzzy C-means, Density_clust, and Shared Nearest Neighbor. The effectiveness of FSNN is evaluated in benchmark datasets. Experimental results using FSNN method show that it can accurately cluster the data points lying in the overlapping partition and generate compact and well-separated clusters as compared to state-of-the-art clustering algorithm. The results obtained using different clustering methods are validated by standard cluster validation measures.
机译:共享最近邻(SNN)聚类算法是基于鲁棒图的高效聚类方法,可以处理高维数据。当数据由形状,密度和大小各异的群集组成,但位于重叠群集的边界区域中的数据点的分配不准确时,SNN群集的效果很好。为了克服这个问题,我们提出了共享最近邻算法的扩展,该算法具有更好的处理能力,即通过模糊概念专门处理重叠聚类的边界区域中的数据点。进行了广泛的实验,以将所提出的方法模糊共享最近邻聚类(FSNN)与现有聚类方法K均值,模糊C均值,Density_clust和共享最近邻。在基准数据集中评估FSNN的有效性。使用FSNN方法的实验结果表明,与最新的聚类算法相比,它可以准确地对重叠分区中的数据点进行聚类,并生成紧凑且分离良好的聚类。使用不同聚类方法获得的结果通过标准聚类验证措施进行验证。

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