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Main Authors: Peng, Tianhao, Wu, Wenjun, Yuan, Haitao, Bao, Zhifeng, Pengrui, Zhao, Yu, Xin, Lin, Xuetao, Liang, Yu, Pu, Yanjun
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2312.09708
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author Peng, Tianhao
Wu, Wenjun
Yuan, Haitao
Bao, Zhifeng
Pengrui, Zhao
Yu, Xin
Lin, Xuetao
Liang, Yu
Pu, Yanjun
author_facet Peng, Tianhao
Wu, Wenjun
Yuan, Haitao
Bao, Zhifeng
Pengrui, Zhao
Yu, Xin
Lin, Xuetao
Liang, Yu
Pu, Yanjun
contents Graph neural networks (GNNs) have shown advantages in graph-based analysis tasks. However, most existing methods have the homogeneity assumption and show poor performance on heterophilic graphs, where the linked nodes have dissimilar features and different class labels, and the semantically related nodes might be multi-hop away. To address this limitation, this paper presents GraphRARE, a general framework built upon node relative entropy and deep reinforcement learning, to strengthen the expressive capability of GNNs. An innovative node relative entropy, which considers node features and structural similarity, is used to measure mutual information between node pairs. In addition, to avoid the sub-optimal solutions caused by mixing useful information and noises of remote nodes, a deep reinforcement learning-based algorithm is developed to optimize the graph topology. This algorithm selects informative nodes and discards noisy nodes based on the defined node relative entropy. Extensive experiments are conducted on seven real-world datasets. The experimental results demonstrate the superiority of GraphRARE in node classification and its capability to optimize the original graph topology.
format Preprint
id arxiv_https___arxiv_org_abs_2312_09708
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle GraphRARE: Reinforcement Learning Enhanced Graph Neural Network with Relative Entropy
Peng, Tianhao
Wu, Wenjun
Yuan, Haitao
Bao, Zhifeng
Pengrui, Zhao
Yu, Xin
Lin, Xuetao
Liang, Yu
Pu, Yanjun
Machine Learning
Artificial Intelligence
Graph neural networks (GNNs) have shown advantages in graph-based analysis tasks. However, most existing methods have the homogeneity assumption and show poor performance on heterophilic graphs, where the linked nodes have dissimilar features and different class labels, and the semantically related nodes might be multi-hop away. To address this limitation, this paper presents GraphRARE, a general framework built upon node relative entropy and deep reinforcement learning, to strengthen the expressive capability of GNNs. An innovative node relative entropy, which considers node features and structural similarity, is used to measure mutual information between node pairs. In addition, to avoid the sub-optimal solutions caused by mixing useful information and noises of remote nodes, a deep reinforcement learning-based algorithm is developed to optimize the graph topology. This algorithm selects informative nodes and discards noisy nodes based on the defined node relative entropy. Extensive experiments are conducted on seven real-world datasets. The experimental results demonstrate the superiority of GraphRARE in node classification and its capability to optimize the original graph topology.
title GraphRARE: Reinforcement Learning Enhanced Graph Neural Network with Relative Entropy
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2312.09708