核(代数)
扩展(谓词逻辑)
聚类分析
计算机科学
样品(材料)
子空间拓扑
模式识别(心理学)
人工智能
核方法
数学
数据挖掘
支持向量机
离散数学
色谱法
化学
程序设计语言
作者
Zhoumin Lu,Feiping Nie,Linru Ma,Rong Wang,Xuelong Li
标识
DOI:10.1109/tip.2025.3593057
摘要
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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