Tianyu Hu’s research while affiliated with Hainan University and other places

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Publications (1)


FIGURE 1. Overview of ME-GCN with key steps.
FIGURE 3. Sub-module ablation experiment results of GHEM, -C and -L represent the use of multi-source information enhancement and hierarchical enhancement respectively.
FIGURE 5. Convergence analysis of ME-GCN: evaluating the stability of accuracy across multiple experiments with 60 training epochs.
Multi-View Enhancement Graph-Level Clustering Network
  • Article
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January 2025

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22 Reads

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1 Citation

IEEE Access

Zeyi Li

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Renda Han

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Tianyu Hu

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[...]

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Caimao Li

Graph-level clustering is a fundamental and significant task in data mining. The advancement of graph neural networks has provided substantial impetus to this area of research. However, existing graph-level clustering methods often focus exclusively on either graph structure or node attributes, which limits their ability to comprehensively capture graph-level features. To address this issue, we propose a Multi-view Enhancement Graph-level Clustering Network (ME-GCN), which consists of a Multi-view Feature Extraction Strategy (MFES) and a Graph-level Heterogeneous Enhancement Mechanism (GHEM) to generate high-quality graph-level representations, thus improving clustering performance. Specifically, the network extracts node attributes, subgraph structure, and global structure information through three personalized encoders with different receptive fields, respectively, to enrich feature representations from different views. In addition, it perceives and reasons heterogeneous features through GHEM, including multi-source information and hierarchical enhancement, which improves the compactness of multi-source representations. Extensive experiments on five benchmark datasets have demonstrated the superiority of ME-GCN, highlighting its effectiveness in leveraging multiple types of structure information for deep graph-level clustering.

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Citations (1)


... Graph-level clustering [1] plays a pivotal role in understanding complex, high-dimensional data by identifying patterns [2] and relationships across multi-graphs. This approach is particularly valuable in domains such as bioinformatics [3], recommender systems [4], and social media analysis [5], [6], where the latent structure of graph-level holds key insights. ...

Reference:

Multi-Relation Graph-Kernel Strengthen Network for Graph-Level Clustering
Multi-View Enhancement Graph-Level Clustering Network

IEEE Access