论文标题

改进的双重相关减少网络

Improved Dual Correlation Reduction Network

论文作者

Liu, Yue, Zhou, Sihang, Liu, Xinwang, Tu, Wenxuan, Yang, Xihong

论文摘要

深度图聚类旨在揭示基础图结构并将节点分为没有人类注释的不同群集,这是一项基本而又具有挑战性的任务。但是,我们观察到现有方法遭受了表示崩溃问题的影响,并且很容易倾向于将具有不同类别的样品编码为同一潜在嵌入。因此,节点的判别能力受到限制,导致了次优聚类性能。为了解决这个问题,我们提出了一种新颖的深图聚类算法,该算法称为改善双重相关性还原网络(IDCRN),通过提高样品的判别能力。具体而言,通过将跨视图特征相关矩阵与身份矩阵近似,我们减少了特征的不同维度之间的冗余,从而明确提高了潜在空间的判别能力。同时,跨视图样品相关矩阵被迫近似设计的聚类精制的邻接矩阵,以指导学习的潜在表示即使在视图上恢复了亲和力矩阵,从而增强了特征的歧视能力。此外,我们避免通过引入的传播正规化项中的图形卷积网络(GCN)中过度平滑的问题引起的崩溃表示,使IDCRN能够使用浅网络结构捕获远程信息。与现有最新的深图聚类算法相比,六个基准的广泛实验结果证明了IDCRN的有效性和效率。

Deep graph clustering, which aims to reveal the underlying graph structure and divide the nodes into different clusters without human annotations, is a fundamental yet challenging task. However, we observed that the existing methods suffer from the representation collapse problem and easily tend to encode samples with different classes into the same latent embedding. Consequently, the discriminative capability of nodes is limited, resulting in sub-optimal clustering performance. To address this problem, we propose a novel deep graph clustering algorithm termed Improved Dual Correlation Reduction Network (IDCRN) through improving the discriminative capability of samples. Specifically, by approximating the cross-view feature correlation matrix to an identity matrix, we reduce the redundancy between different dimensions of features, thus improving the discriminative capability of the latent space explicitly. Meanwhile, the cross-view sample correlation matrix is forced to approximate the designed clustering-refined adjacency matrix to guide the learned latent representation to recover the affinity matrix even across views, thus enhancing the discriminative capability of features implicitly. Moreover, we avoid the collapsed representation caused by the over-smoothing issue in Graph Convolutional Networks (GCNs) through an introduced propagation regularization term, enabling IDCRN to capture the long-range information with the shallow network structure. Extensive experimental results on six benchmarks have demonstrated the effectiveness and the efficiency of IDCRN compared to the existing state-of-the-art deep graph clustering algorithms.

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