一种新的多视图数据聚类共识和互补信息学习方法

Khanh Luong, R. Nayak
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引用次数: 16

摘要

需要开发有效的方法来处理多视图数据的多面性。利用耦合矩阵分解(CMF)和非负矩阵分解(NMF),设计了一种基于损失函数的分解方法,同时学习多视图数据中存在的一致性和互补信息的两个分量。我们提出了一种新的多视图数据的最优流形,它是嵌入在高维多视图数据中的最一致的流形。在损失函数中增加了一个新的互补增强项,以增强每个视图固有的互补信息。在不同的数据集上进行了广泛的实验,对最先进的多视图聚类方法进行了基准测试,证明了该方法在获得准确聚类解决方案方面的有效性。
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A Novel Approach to Learning Consensus and Complementary Information for Multi-View Data Clustering
Effective methods are required to be developed that can deal with the multi-faceted nature of the multi-view data. We design a factorization-based loss function-based method to simultaneously learn two components encoding the consensus and complementary information present in multi-view data by using the Coupled Matrix Factorization (CMF) and Non-negative Matrix Factorization (NMF). We propose a novel optimal manifold for multi-view data which is the most consensed manifold embedded in the high-dimensional multi-view data. A new complementary enhancing term is added in the loss function to enhance the complementary information inherent in each view. An extensive experiment with diverse datasets, benchmarking the state-of-the-art multi-view clustering methods, has demonstrated the effectiveness of the proposed method in obtaining accurate clustering solution.
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