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On kernel fuzzy c-means for data with tolerance using explicit mapping for kernel data analysis

机译:使用显式映射的内核数据分析具有容差的内核模糊c均值

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An explicit mapping is generally unknown for kernel data analysis but their inner product should be known. Though kernel fuzzy c-means algorithm for data with tolerance has been proposed by the authors, the cluster centers and the tolerance in higher dimensional space have been unseen. Contrary to this common assumption, an explicit mapping has been introduced by one of the authors and the situation of kernel fuzzy c-means in higher dimensional space has been described via kernel principal component analysis using the explicit mapping. In this paper, the cluster centers and the tolerance of kernel fuzzy c-means for data with tolerance are described via kernel principal component analysis using the explicit mapping.
机译:对于内核数据分析,显式映射通常是未知的,但应知道其内部产品。虽然作者提出了具有容差的数据的内核模糊C-MEAS算法,但是,群集中心和高尺寸空间的容差已经看不见。与这种共同的假设相反,通过使用显式映射,通过内核主成分分析描述了一个作者的作者和内核模糊C-ilse的情况下的一个作者和内核模糊C-ilit的情况。在本文中,通过核心主成分分析使用显式映射来描述群集中心和具有公差数据的核心模糊C-ilse的容差。

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