基于锚点-样本核的可伸缩子空间聚类简化及其多视图扩展

IF 13.7
Zhoumin Lu;Feiping Nie;Linru Ma;Rong Wang;Xuelong Li
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引用次数: 0

摘要

众所周知,稀疏子空间学习可以为谱聚类提供良好的输入,从而产生高质量的聚类划分。然而,它使用完整样本作为字典进行表示学习,导致不可忽略的计算成本。因此,用具有代表性的样本(锚点)代替完整的样本作为词典成为一种更受欢迎的选择,并产生了一系列相关的作品。不幸的是,尽管这些工作在样本数量方面是线性的,但它们在锚点数量方面往往是二次甚至三次的。在本文中,我们推导了一个更简单的问题来取代原来的可扩展子空间聚类,利用了其特性。这个新问题在样本数量和锚点数量方面都是线性的,这进一步增强了可伸缩性,并提供了更高效的操作。此外,由于新的问题表述,我们可以对多视图扩展采用单独的融合策略。该策略可以更好地度量视图间差异,避免重复优化,从而实现更加鲁棒和高效的多视图聚类。最后,综合实验表明,我们的方法不仅显著减少了时间开销,而且具有优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simplifying Scalable Subspace Clustering and Its Multi-View Extension by Anchor-to-Sample Kernel
As we all known, sparse subspace learning can provide good input for spectral clustering, thereby producing high-quality cluster partitioning. However, it employs complete samples as the dictionary for representation learning, resulting in non-negligible computational costs. Therefore, replacing the complete samples with representative ones (anchors) as the dictionary has become a more popular choice, giving rise to a series of related works. Unfortunately, although these works are linear with respect to the number of samples, they are often quadratic or even cubic with respect to the number of anchors. In this paper, we derive a simpler problem to replace the original scalable subspace clustering, whose properties are utilized. This new problem is linear with respect to both the number of samples and anchors, further enhancing scalability and providing more efficient operations. Furthermore, thanks to the new problem formulation, we can adopt a separate fusion strategy for multi-view extensions. This strategy can better measure the inter-view difference and avoid alternate optimization, so as to achieve more robust and efficient multi-view clustering. Finally, comprehensive experiments demonstrate that our methods not only significantly reduce time overhead but also exhibit superior performance.
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