Kernelized Graph-based Multi-view Clustering on High Dimensional Data

S. Manna, Jessy Rimaya Khonglah, A. Mukherjee, G. Saha
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Abstract

Kernelized graph-based learning methods have gained popularity because of its better performances in the clustering task. But in high dimensional data, there exist many redundant features which may degrade the clustering performances. To solve this issue, we propose a novel multi-view kernelized graph-based clustering (MVKGC) framework for high dimensional data that performs the clustering task while reducing the dimensionality of the data. The proposed method also uses multiple views which help to improve the clustering performances by providing different partial information of a given data set. The extensive experiments of the proposed method on different real-world benchmark data sets show a better and efficient performance of the proposed method than other existing methods.
基于核图的高维数据多视图聚类
基于核图的学习方法因其在聚类任务中具有较好的性能而得到了广泛的应用。但在高维数据中,存在许多冗余特征,可能会降低聚类性能。为了解决这个问题,我们针对高维数据提出了一种新的多视图核图聚类(MVKGC)框架,该框架在降低数据维数的同时执行聚类任务。该方法还使用了多个视图,通过提供给定数据集的不同部分信息,有助于提高聚类性能。在不同的真实基准数据集上进行的大量实验表明,该方法的性能优于现有方法。
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