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Multi-view clustering via joint feature selection and partially constrained cluster label learning

机译:通过联合特征选择和部分约束群集标签学习多视图聚类

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摘要

Real world data are often represented by multiple distinct feature sets, and some prior knowledge is provided, such as labels of some examples or pairwise constraints between several sample pairs. Accordingly, task of multi-view clustering arises from a complex information aggregation of multiple sources of feature sets and knowledge prior. In this paper, we propose to optimize the cluster indicator, which representing the class labels is an intuitive reflection of the clustering structure. Besides, the prior indicating the same level of semantics can be directly utilized guiding the learned clustering structure. Furthermore, feature selection is embedded into the above process to select views and features in each view, which leads to the most discriminative views and features chosen for every single cluster. To these ends, an objective is accordingly proposed with an efficient optimization strategy and convergence analysis. Extensive experiments demonstrate that our model performs better than the state-of-the-art methods. (C) 2019 Elsevier Ltd. All rights reserved.
机译:现实世界数据通常由多个不同的特征集表示,并且提供了一些先验知识,例如一些示例的标签或几个样本对之间的成对约束。因此,多视图聚类的任务是由多个特征集和知识的复杂信息聚合的复杂信息聚合。在本文中,我们建议优化代表类标签的集群指示器是对聚类结构的直观反映。此外,可以直接利用之前指示相同水平的语义,引导学习的聚类结构。此外,特征选择嵌入到上述过程中以在每个视图中选择视图和功能,这导致每个单个群集选择的最辨别性视图和功能。对于这些目的,因此提出了一种有效的优化策略和收敛分析的目标。广泛的实验表明,我们的模型比现有技术的方法更好。 (c)2019年elestvier有限公司保留所有权利。

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