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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A novel consensus learning approach to incomplete multi-view clustering
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A novel consensus learning approach to incomplete multi-view clustering

机译:不完备多视距聚类的新建议学习方法

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摘要

Multi-view data may lose some instances in real applications. Most existing methods for clustering such incomplete multi-view data still have at least one of the following limitations: 1) The common relations among data points across all views are ignored. 2) The complementary multi-view information of original data representation is not well exploited. 3) Arbitrary incomplete scenarios or data with negative entries cannot be handled. To address these limitations, in this paper, we propose a novel Consensus Learning approach to Incomplete Multi-view Clustering (CLIMC). Specifically, a low-dimensional consensus representation is introduced to exploit complementary multi-view information from the original feature representation of available instances by integrating index matrices into matrix factorization. In addition, by combining self-representation, index matrices, and consensus term, a consensus similarity graph is leveraged to explore the underlying cross-view relations among data points. Further, the key of the proposed CLIMC is that the consensus representation is correlated with the similarity graph by a graph Laplacian regularization. Consequently, the compactness of the low-dimensional representation and the accuracy of similarity degree of the graph are reciprocally promoted. Extensive experiments on several multi-view datasets demonstrate the effectiveness of CLIMC over state-of-the-arts. ? 2021 Elsevier Ltd. All rights reserved.
机译:在实际应用中,多视图数据可能会丢失一些实例。对于这种不完整的多视图数据,大多数现有的聚类方法仍然至少有以下一个局限性:1)忽略了所有视图中数据点之间的公共关系。2) 原始数据表示的互补多视图信息没有得到很好的利用。3) 无法处理任意不完整的场景或带有负面条目的数据。为了解决这些局限性,本文提出了一种新的不完全多视图聚类一致性学习方法(CLIMC)。具体而言,通过将索引矩阵集成到矩阵分解中,引入低维一致性表示,以利用可用实例的原始特征表示中的互补多视图信息。此外,通过结合自表示、索引矩阵和一致性项,利用一致性相似图来探索数据点之间潜在的交叉视图关系。此外,提出的CLIMC的关键是通过图拉普拉斯正则化将一致性表示与相似图相关联。因此,低维表示的紧致性和图的相似度的准确性是相互促进的。在多个多视图数据集上进行的大量实验证明了CLIMC的有效性?2021爱思唯尔有限公司保留所有权利。

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