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Soft Subspace Clustering Ensemble Framework Based on the Latent Model

机译:基于潜在模型的软子空间聚类集群框架

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Clustering ensemble approaches usually have more accurate, robust and stable results than traditional single clustering approaches. However, clustering ensemble can still be improved in the following aspects: (1) improve the diversity of subspaces; (2) employ probabilistic latent clustering; (3) adopt the internal latent factor analysis before the consensus function. Therefore, we propose a new clustering ensemble framework. Specifically, we analysis the original data via Jensen-Shannon divergence distribution, and then soft subspaces are generated according to the corresponding fuzzy matrix. Next, the probabilistic latent semantic analysis clustering algorithm is employed to perform clustering in each soft subspace. The final clustering performance is improved due to the reason that the latent factor model is applied to fusion matrix. Compared with traditional single and ensemble clustering algorithms, our framework achieves superior performances on 12 real-world datasets.
机译:聚类集群方法通常具有比传统的单一聚类方法更准确,强大,稳定的结果。但是,在以下几个方面仍然可以改进聚类集群:(1)提高子空间的多样性; (2)雇用概率潜聚类; (3)在共识函数之前采用内部潜在因子分析。因此,我们提出了一个新的集群集合框架。具体而言,我们通过Jensen-Shannon发散分布分析原始数据,然后根据相应的模糊矩阵生成软子空间。接下来,采用概率潜在语义分析聚类群体在每个软子空间中执行群集。由于潜伏因子模型应用于融合矩阵,因此最终的聚类性能得到改善。与传统的单一和集群聚类算法相比,我们的框架在12个现实世界数据集中实现了卓越的性能。

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