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Characterizing the Influence of Topology on Graph Learning Tasks

Authors :
Wu, Kailong
Xie, Yule
Ding, Jiaxin
Ren, Yuxiang
Fu, Luoyi
Wang, Xinbing
Zhou, Chenghu
Publication Year :
2024

Abstract

Graph neural networks (GNN) have achieved remarkable success in a wide range of tasks by encoding features combined with topology to create effective representations. However, the fundamental problem of understanding and analyzing how graph topology influences the performance of learning models on downstream tasks has not yet been well understood. In this paper, we propose a metric, TopoInf, which characterizes the influence of graph topology by measuring the level of compatibility between the topological information of graph data and downstream task objectives. We provide analysis based on the decoupled GNNs on the contextual stochastic block model to demonstrate the effectiveness of the metric. Through extensive experiments, we demonstrate that TopoInf is an effective metric for measuring topological influence on corresponding tasks and can be further leveraged to enhance graph learning.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.07493
Document Type :
Working Paper