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Exclusivity-Consistency Regularized Multi-view Subspace Clustering

机译:排他性-一致性正则化多视图子空间聚类

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Multi-view subspace clustering aims to partition a set of multi-source data into their underlying groups. To boost the performance of multi-view clustering, numerous subspace learning algorithms have been developed in recent years, but with rare exploitation of the representation complementarity between different views as well as the indicator consistency among the representations, let alone considering them simultaneously. In this paper, we propose a novel multi-view subspace clustering model that attempts to harness the complementary information between different representations by introducing a novel position-aware exclusivity term. Meanwhile, a consistency term is employed to make these complementary representations to further have a common indicator. We formulate the above concerns into a unified optimization framework. Experimental results on several benchmark datasets are conducted to reveal the effectiveness of our algorithm over other state-of-the-arts.
机译:多视图子空间聚类旨在将一组多源数据划分为其基础组。为了提高多视图聚类的性能,近年来已经开发了许多子空间学习算法,但是很少利用不同视图之间的表示互补性以及表示之间的指标一致性,更不用说同时考虑它们了。在本文中,我们提出了一种新颖的多视图子空间聚类模型,该模型试图通过引入新颖的位置感知专有项来利用不同表示之间的互补信息。同时,一致性术语被用来使这些互补表示进一步具有共同的指示符。我们将上述关注点公式化为一个统一的优化框架。进行了一些基准数据集的实验结果,以揭示我们的算法相对于其他最新技术的有效性。

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