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研究成果 "Learnable Graph Convolutional Network With Semisupervised Graph Information Bottleneck" 发表于IEEE Transactions on Neural Networks and Learning Systems

信息来源:暂无 发布日期: 2024-09-09 浏览次数:

篇名:Learnable Graph Convolutional Network With Semisupervised Graph Information Bottleneck

作者:Luying Zhong, Zhaoliang Chen , Zhihao Wu , Shide Du , Zheyi Chen, Shiping Wang

年份:2023

DOI:https://doi.org/10.1109/TNNLS.2023.3322739

文章摘要:

Graph convolutional network (GCN) has gained widespread attention in semisupervised classification tasks. Recent studies show that GCN-based methods have achieved decent performance in numerous fields. However, most of the existing methods generally adopted a fixed graph that cannot dynamically capture both local and global relationships. This is because the hidden and important relationships may not be directed exhibited in the fixed structure, causing the degraded performance of semisupervised classification tasks. Moreover, the missing and noisy data yielded by the fixed graph may result in wrong connections, thereby disturbing the representation learning process. To cope with these issues, this article proposes a learnable GCN-based framework, aiming to obtain the optimal graph structures by jointly integrating graph learning and feature propagation in a unified network. Besides, to capture the optimal graph representations, this article designs dualGCN-based meta-channels to simultaneously explore local and global relations during the training process. To minimize the interference of the noisy data, a semisupervised graph information bottleneck (SGIB) is introduced to conduct the graph structural learning (GSL) for acquiring the minimal sufficient representations. Concretely, SGIB aims to maximize the mutual information of both the same and different meta-channels by designing the constraints between them, thereby improving the node classification performance in the downstream tasks. Extensive experimental results on real-world datasets demonstrate the robustness of the proposed model, which outperforms state-ofthe-art methods with fixed-structure graphs.

关键词:

Graph convolutional network (GCN), graph information bottleneck, graph learning, mutual information, semisupervised learning.