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Main Authors: Huang, Jincheng, Mo, Yujie, Shi, Xiaoshuang, Feng, Lei, Zhu, Xiaofeng
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.02279
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author Huang, Jincheng
Mo, Yujie
Shi, Xiaoshuang
Feng, Lei
Zhu, Xiaofeng
author_facet Huang, Jincheng
Mo, Yujie
Shi, Xiaoshuang
Feng, Lei
Zhu, Xiaofeng
contents The message-passing mechanism of graph convolutional networks (i.e., GCNs) enables label information to reach more unlabeled neighbors, thereby increasing the utilization of labels. However, the additional label information does not always contribute positively to the GCN. To address this issue, we propose a new two-step framework called ELU-GCN. In the first stage, ELU-GCN conducts graph learning to learn a new graph structure (i.e., ELU-graph), which allows the additional label information to positively influence the predictions of GCN. In the second stage, we design a new graph contrastive learning on the GCN framework for representation learning by exploring the consistency and mutually exclusive information between the learned ELU graph and the original graph. Moreover, we theoretically demonstrate that the proposed method can ensure the generalization ability of GCNs. Extensive experiments validate the superiority of our method.
format Preprint
id arxiv_https___arxiv_org_abs_2411_02279
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhancing the Influence of Labels on Unlabeled Nodes in Graph Convolutional Networks
Huang, Jincheng
Mo, Yujie
Shi, Xiaoshuang
Feng, Lei
Zhu, Xiaofeng
Machine Learning
The message-passing mechanism of graph convolutional networks (i.e., GCNs) enables label information to reach more unlabeled neighbors, thereby increasing the utilization of labels. However, the additional label information does not always contribute positively to the GCN. To address this issue, we propose a new two-step framework called ELU-GCN. In the first stage, ELU-GCN conducts graph learning to learn a new graph structure (i.e., ELU-graph), which allows the additional label information to positively influence the predictions of GCN. In the second stage, we design a new graph contrastive learning on the GCN framework for representation learning by exploring the consistency and mutually exclusive information between the learned ELU graph and the original graph. Moreover, we theoretically demonstrate that the proposed method can ensure the generalization ability of GCNs. Extensive experiments validate the superiority of our method.
title Enhancing the Influence of Labels on Unlabeled Nodes in Graph Convolutional Networks
topic Machine Learning
url https://arxiv.org/abs/2411.02279