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Neighbouring Constraint Deep Matrix Factorization for Sequential Multi-view Clustering

机译:顺序多视图群集的相邻约束深矩阵分解

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Multi-view clustering (MVC) aims to partition a set of multi-source data into their underlying groups. To boost the performance, how to explore the better representation is important. In this paper, we present a deep matrix factorization model with the features fusion to deal with sequential multi-view clustering problem. In this method, neighbouring constraint is embedded to find the cluster boundary information in each view layer by layer, and an aggregated output representation can be obtained for MVC. Experiments have shown that the proposed model improve the clustering performance greatly and can be used in applications such as motion segmentation.
机译:多视图群集(MVC)旨在将一组多源数据分区为其底层组。为了提高性能,如何探索更好的表示是重要的。在本文中,我们介绍了一个深入的矩阵分解模型,具有融合来处理顺序多视图聚类问题。在该方法中,嵌入相邻约束以通过层找到每个视图层中的簇边界信息,并且可以获得用于MVC的聚合输出表示。实验表明,所提出的模型大大提高了聚类性能,可用于运动分割等应用。

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