RFMC:一种粗糙模糊多视图聚类方法

Jie Hu, Tianrui Li, Yan Yang, Peng Xie, Xueli Xiao
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引用次数: 0

摘要

如今,随着越来越多的数据通过不同的测量技术或各种来源被采集,多视图数据集已经无处不在,其中数据集的各个方面被形式化为多视图。虽然已经提出了各种多视图聚类分析方法来揭示隐藏在数据中的聚类结构,但这些方法大多基于这样一个假设:对象与聚类之间的关系是确定的。然而,现实生活中的大多数数据可能没有明确的聚类边界,而是边界模糊或重叠。如何有效地揭示多视图数据下不确定的聚类结构仍然是多视图聚类分析面临的一大挑战。受粗糙集和模糊集强大的不确定信息建模和分析能力的启发,本文提出了一种新的多视图聚类方法来发现不确定聚类信息。设计了一种基于粗糙集概念的聚类质心更新策略,有效地描述了聚类的不确定性构造。引入视图权重来捕获不同视图的不同重要性。提出了一种基于模糊的迭代优化目标函数来融合不同的视图信息。最后,设计了一种有效的迭代优化算法来求解所提出的粗糙模糊目标函数。在广泛使用的基准数据集上的实验证明,我们提出的方法总是优于几种最新的聚类方法。
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RFMC: A Rough Fuzzy Multi-view Clustering Approach
Nowadays, multi-view dataset have become ubiquitous along with more and more data are gathered from different measuring technologies or various sources, in which various aspects of dataset are formalized as multiple views. Although a variety of multi-view clustering analysis approaches have been put forward to uncover the cluster structure hidden in the data, most of these existing methods are based on such a hypothesis: the relationship between objects and clusters are definite. However, most of the data in our real life may have no clear cluster boundaries but have indistinct or overlapping boundaries. How to effectively reveal the uncertain cluster structure under multiview data is still a big challenge for multi-view clustering analysis. Inspired by the powerful uncertain information modeling and analysis capabilities of rough and fuzzy sets, this paper proposes a new multi-view clustering method to discover the uncertain cluster information. A rough set concept based cluster centroid updating strategy is designed to efficiently describe the uncertain construction of clusters. A view weight is introduced to capture the different importance of various views. A fuzzy-based iterative optimization objective function is developed to fuse different view information. Finally, an efficient iterative optimization algorithm is devised to solve the proposed rough fuzzy objective function. Experiments on widely used benchmark datasets prove that our proposed method is always superior to several latest clustering approaches.
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