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Shadowed set-based rough-fuzzy clustering using random feature mapping

机译:使用随机特征映射的基于阴影集的粗糙模糊聚类

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The shadowed set-based rough fuzzy clustering (SRFCM) methods have shown great performance on the data with outliers. But for the data with non-spherical clusters, the SRFC approaches cannot produce good results. The reason is the SRFCM, just like classical fuzzy c-means algorithms, works on the original data space and assures the linear separability of different clusters. The kernel methods can be combined with fuzzy clustering to deal with the non-spherical problem, but the size of kernel matrix is the square of the number of the input data, which makes the kernel fuzzy clustering is not suitable for very large data. But if we approximate the kernel space by using Fourier random feature mappings, the SRFC can be directly applied over the random features generated by data. This approach combines the advantages of SRFCM in handling outliers and the random features in processing non-spherical clusters. The experimental results show good performance of the SRFCM in the random feature space.
机译:基于阴影集的粗糙模糊聚类(SRFCM)方法在具有异常值的数据上显示出了出色的性能。但是对于具有非球形群集的数据,SRFC方法无法产生良好的结果。原因是SRFCM就像经典的模糊c均值算法一样,在原始数据空间上工作,并确保了不同聚类的线性可分离性。核方法可以与模糊聚类相结合来处理非球面问题,但是核矩阵的大小是输入数据数量的平方,这使得核模糊聚类不适用于非常大的数据。但是,如果我们通过使用傅立叶随机特征映射来近似内核空间,则可以将SRFC直接应用于数据生成的随机特征。这种方法结合了SRFCM在处理异常值方面的优势以及在处理非球形聚类中的随机特征。实验结果表明,SRFCM在随机特征空间中具有良好的性能。

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