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Batch FCM with volume prototypes for clustering high-dimensional datasets with large number of clusters

机译:具有体积原型的批处理FCM,用于将具有大量聚类的高维数据集聚类

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In this paper we present Batch Fuzzy c-Mean with Volume Prototypes algorithm suitable to cluster large high-dimensional datasets with large chosen number of existing clusters. This algorithm is much faster than the original FCM. An important part of proposed algorithm is an initialization process of the prototypes vectors, which provides better basis for finding the centers of the clusters. An another feature of the algorithm is its ability to estimate an amount of noise in the dataset. We also describe the possible application of the algorithm for the robot navigation.
机译:在本文中,我们提出了具有体积原型算法的批量模糊c均值算法,适用于对具有大量已选择聚类的大型高维数据集进行聚类。该算法比原始FCM快得多。所提出算法的重要部分是原型向量的初始化过程,这为寻找聚类的中心提供了更好的基础。该算法的另一个特点是能够估计数据集中的噪声量。我们还描述了该算法在机器人导航中的可能应用。

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