Wang Siwei, Liu Xinwang, Liu Suyuan, Tu Wenxuan, Zhu En
IEEE Trans Image Process. 2024;33:4627-4639. doi: 10.1109/TIP.2024.3444320. Epub 2024 Aug 28.
Anchor graph has been recently proposed to accelerate multi-view graph clustering and widely applied in various large-scale applications. Different from capturing full instance relationships, these methods choose small portion anchors among each view, construct single-view anchor graphs and combine them into the unified graph. Despite its efficiency, we observe that: (i) Existing mechanism adopts a separable two-step procedure-anchor graph construction and individual graph fusion, which may degrade the clustering performance. (ii)These methods determine the number of selected anchors to be equal among all the views, which may destruct the data distribution diversity. A more flexible multi-view anchor graph fusion framework with diverse magnitudes is desired to enhance the representation ability. (iii) During the latter fusion process, current anchor graph fusion framework follows simple linearly-combined style while the intrinsic clustering structures are ignored. To address these issues, we propose a novel scalable and flexible anchor graph fusion framework for multi-view graph clustering method in this paper. Specially, the anchor graph construction and graph alignment are jointly optimized in our unified framework to boost clustering quality. Moreover, we present a novel structural alignment regularization to adaptively fuse multiple anchor graphs with different magnitudes. In addition, our proposed method inherits the linear complexity of existing anchor strategies respecting to the sample number, which is time-economical for large-scale data. Experiments conducted on various benchmark datasets demonstrate the superiority and effectiveness of the newly proposed anchor graph fusion framework against the existing state-of-the-arts over the clustering performance promotion and time expenditure. Our code is publicly available at https://github.com/wangsiwei2010/SMVAGC-SF.
锚图最近被提出来用于加速多视图图聚类,并在各种大规模应用中得到广泛应用。与捕捉完整实例关系不同,这些方法在每个视图中选择一小部分锚点,构建单视图锚图并将它们组合成统一的图。尽管其效率较高,但我们观察到:(i) 现有机制采用可分离的两步过程——锚图构建和单个图融合,这可能会降低聚类性能。(ii) 这些方法确定所有视图中选定锚点的数量相等,这可能会破坏数据分布的多样性。需要一个更灵活的具有不同量级的多视图锚图融合框架来增强表示能力。(iii) 在后期融合过程中,当前的锚图融合框架遵循简单的线性组合方式,而忽略了内在的聚类结构。为了解决这些问题,我们在本文中提出了一种用于多视图图聚类方法的新颖的可扩展且灵活的锚图融合框架。具体来说,在我们的统一框架中,锚图构建和图对齐被联合优化以提高聚类质量。此外,我们提出了一种新颖的结构对齐正则化方法,以自适应地融合具有不同量级的多个锚图。此外,我们提出的方法继承了现有锚策略相对于样本数量的线性复杂度,这对于大规模数据来说是节省时间的。在各种基准数据集上进行的实验表明,新提出的锚图融合框架在聚类性能提升和时间消耗方面优于现有最先进方法。我们的代码可在https://github.com/wangsiwei2010/SMVAGC-SF上公开获取。