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Multi-view clustering on unmapped data via constrained non-negative matrix factorization

机译:通过约束非负矩阵分解,在未映射数据上的多视图聚类

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摘要

Existing multi-view clustering algorithms require that the data is completely or partially mapped between each pair of views. However, this requirement could not be satisfied in many practical settings. In this paper, we tackle the problem of multi-view clustering on unmapped data in the framework of NMF based clustering. With the help of inter-view constraints, we define the disagreement between each pair of views by the fact that the indicator vectors of two samples from two different views should be similar if they belong to the same cluster and dissimilar otherwise. The overall objective of our algorithm is to minimize the loss function of NMF in each view as well as the disagreement between each pair of views. Furthermore, we provide an active inter-view constraints selection strategy which tries to query the relationships between samples that are the most influential and samples that are the farthest from the existing constraint set. Experimental results show that, with a small number of (either randomly selected or actively selected) constraints, the proposed algorithm performs well on unmapped data, and outperforms the baseline algorithms on partially mapped data and completely mapped data. (C) 2018 Elsevier Ltd. All rights reserved.
机译:现有的多视图聚类算法要求数据在每对视图之间完全或部分地映射。但是,在许多实际设置中,此要求无法满足。在本文中,我们解决了基于NMF基于群集的框架中未映射数据的多视图聚类问题。在视图间约束的帮助下,我们通过两个不同视图的两个样本的指示器向量之间定义每对视图之间的分歧应该是相同的,如果它们属于同一群集并且不相似。我们算法的总体目标是最小化每个视图中NMF的损耗功能以及每对视图之间的分歧。此外,我们提供了一个有效的视图间约束选择策略,它试图查询样本之间的关系,这些样本是最有影响力的和样本,这些样本是距离现有约束集最远的样本。实验结果表明,具有少数(随机选择或主动选择)约束,所提出的算法在未映射的数据上执行良好,并且优于部分映射数据和完全映射数据的基线算法。 (c)2018年elestvier有限公司保留所有权利。

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