使用多视图的低秩核图聚类

S. Manna, Jessy Rimaya Khonglah, A. Mukherjee, G. Saha
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引用次数: 1

摘要

使用多核的核化方法在基于图的聚类中表现出较好的性能。但是这些核化的方法会受到数据集中存在的噪声的影响。此外,在那些基于核图的聚类方法中,只使用了单个视图。为了解决这些问题,本文提出了一种新的低秩多视图多核图聚类框架(LRMVMKC)。其中通过低秩最优核学习利用核矩阵的相似性特性,并通过使用提供关于给定数据集的不同部分信息的多个视图来提高聚类性能。在不同的基准数据集上使用所提出的LRMVMKC框架表明,所提出的框架比其他现有方法具有更好的性能。
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Low-Rank Kernelized Graph-based Clustering using Multiple Views
Kernelized methods using multiple kernels have shown better performances in graph-based clustering. But those kernelized methods get affected by the noise present in the data set. Also, only a single view has been used in those kernelized graph-based clustering methods. To address those issues, a novel low-rank multi-view multi-kernel graph-based clustering framework (LRMVMKC) has been proposed in this paper. Where the similarity nature of kernel matrices are exploited by low-rank optimal kernel learning and the clustering performances are boosted by using multiple views that provide different partial information about a given data set. The use of the proposed LRMVMKC framework on different benchmark data sets demonstrates the better performances of the proposed framework over other existing methods.
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