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Main Authors: Zhou, Zijie, Lu, Zhaoqi, Wei, Xuekai, Chen, Rongqin, Zhang, Shenghui, Ip, Pak Lon, U, Leong Hou
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.15302
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author Zhou, Zijie
Lu, Zhaoqi
Wei, Xuekai
Chen, Rongqin
Zhang, Shenghui
Ip, Pak Lon
U, Leong Hou
author_facet Zhou, Zijie
Lu, Zhaoqi
Wei, Xuekai
Chen, Rongqin
Zhang, Shenghui
Ip, Pak Lon
U, Leong Hou
contents Graph Neural Networks (GNNs) are widely used in graph data mining tasks. Traditional GNNs follow a message passing scheme that can effectively utilize local and structural information. However, the phenomena of over-smoothing and over-squashing limit the receptive field in message passing processes. Graph Transformers were introduced to address these issues, achieving a global receptive field but suffering from the noise of irrelevant nodes and loss of structural information. Therefore, drawing inspiration from fine-grained token-based representation learning in Natural Language Processing (NLP), we propose the Structure-aware Multi-token Graph Transformer (Tokenphormer), which generates multiple tokens to effectively capture local and structural information and explore global information at different levels of granularity. Specifically, we first introduce the walk-token generated by mixed walks consisting of four walk types to explore the graph and capture structure and contextual information flexibly. To ensure local and global information coverage, we also introduce the SGPM-token (obtained through the Self-supervised Graph Pre-train Model, SGPM) and the hop-token, extending the length and density limit of the walk-token, respectively. Finally, these expressive tokens are fed into the Transformer model to learn node representations collaboratively. Experimental results demonstrate that the capability of the proposed Tokenphormer can achieve state-of-the-art performance on node classification tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2412_15302
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Tokenphormer: Structure-aware Multi-token Graph Transformer for Node Classification
Zhou, Zijie
Lu, Zhaoqi
Wei, Xuekai
Chen, Rongqin
Zhang, Shenghui
Ip, Pak Lon
U, Leong Hou
Machine Learning
Graph Neural Networks (GNNs) are widely used in graph data mining tasks. Traditional GNNs follow a message passing scheme that can effectively utilize local and structural information. However, the phenomena of over-smoothing and over-squashing limit the receptive field in message passing processes. Graph Transformers were introduced to address these issues, achieving a global receptive field but suffering from the noise of irrelevant nodes and loss of structural information. Therefore, drawing inspiration from fine-grained token-based representation learning in Natural Language Processing (NLP), we propose the Structure-aware Multi-token Graph Transformer (Tokenphormer), which generates multiple tokens to effectively capture local and structural information and explore global information at different levels of granularity. Specifically, we first introduce the walk-token generated by mixed walks consisting of four walk types to explore the graph and capture structure and contextual information flexibly. To ensure local and global information coverage, we also introduce the SGPM-token (obtained through the Self-supervised Graph Pre-train Model, SGPM) and the hop-token, extending the length and density limit of the walk-token, respectively. Finally, these expressive tokens are fed into the Transformer model to learn node representations collaboratively. Experimental results demonstrate that the capability of the proposed Tokenphormer can achieve state-of-the-art performance on node classification tasks.
title Tokenphormer: Structure-aware Multi-token Graph Transformer for Node Classification
topic Machine Learning
url https://arxiv.org/abs/2412.15302