利用增强图和重构图结构实现归属图聚类

IF 10.7 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Artificial Intelligence Review Pub Date : 2024-09-30 DOI:10.1007/s10462-024-10958-1
Xuejin Yang, Cong Xie, Kemin Zhou, Shaoyun Song, Junsheng Yang, Bin Li
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引用次数: 0

摘要

在现实世界的各种应用中,利用结构和属性信息进行归属图聚类至关重要。然而,由于图的稀疏性以及图卷积网络(GCN)对噪声的敏感性,目前的方法面临着挑战。此外,基于 GCN 的方法通常是基于同亲图假设而设计的,忽略了异亲图。为了解决这些问题,我们提出了一种由四个阶段组成的图聚类方法:图增强、图重建、图细化和双引导监督模块。增强图模块由辅助图定义,以考虑拓扑结构中的远距离关系,从而缓解稀疏图的局限性。图重建阶段包括同亲图和异亲图的创建和整合,以实现图无关性。在图细化阶段,对辅助图进行迭代改进,以增强表征的泛化能力。在这一阶段,应用子空间聚类模块将基于属性的嵌入转换为基于关系的表示。最后,提取的图被馈送到双引导监督模块,以获得最终的聚类结果。在多个基准数据集上进行的实验验证证明了我们模型的高效性。同时,这些发现为归因图聚类提供了重大进展,有望提高在各个领域的适用性。
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Towards attributed graph clustering using enhanced graph and reconstructed graph structure

Attributed graph clustering, leveraging both structural and attribute information, is crucial in various real-world applications. However, current approaches face challenges stemming from the sparsity of graphs and sensitivity to noise in Graph Convolutional Networks (GCNs). Moreover, GCN-based methods are often designed based on the assumption of homophilic graph and ignore heterophilic graph. To address these, we propose a graph clustering method that consists of four phases: graph enhance, graph reconstruction, graph refine, and dual-guidance supervisor module. An enhanced graph module is defined by an auxiliary graph to consider distant relationships in the topology structure to alleviate the limitations of sparse graphs. The graph reconstruction phase includes the creation and integration of homophily and heterophily graphs to achieve graph-agnostic. In graph refine, the auxiliary graph is iteratively improved to enhance the generalization of the representation. In this phase, a subspace clustering module is applied to convert attribute-based embeddings into relationship-based representations. Finally, the extracted graphs are fed to a dual-guidance supervisor module to obtain the final clustering result. Experimental validation on several benchmark datasets demonstrates the efficiency of our model. Meanwhile, the findings offer significant advancements in attributed graph clustering, promising improved applicability in various domains.

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来源期刊
Artificial Intelligence Review
Artificial Intelligence Review 工程技术-计算机:人工智能
CiteScore
22.00
自引率
3.30%
发文量
194
审稿时长
5.3 months
期刊介绍: Artificial Intelligence Review, a fully open access journal, publishes cutting-edge research in artificial intelligence and cognitive science. It features critical evaluations of applications, techniques, and algorithms, providing a platform for both researchers and application developers. The journal includes refereed survey and tutorial articles, along with reviews and commentary on significant developments in the field.
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