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Deeper Insights Into Deep Graph Convolutional Networks: Stability and Generalization

Guangrui Yang, Ming Li, Feng Han, Xiaosheng Zhuang

2025IEEE Transactions on Pattern Analysis and Machine Intelligence10 citationsDOI

Abstract

Graph convolutional networks (GCNs) have emerged as powerful models for graph learning tasks, exhibiting promising performance in various domains. While their empirical success is evident, there is a growing need to understand their essential ability from a theoretical perspective. Existing theoretical research has primarily focused on the analysis of single-layer GCNs, while a comprehensive theoretical exploration of the stability and generalization of deep GCNs remains limited. In this paper, we bridge this gap by delving into the stability and generalization properties of deep GCNs, aiming to provide valuable insights by characterizing rigorously the associated upper bounds. Our theoretical results reveal that the stability and generalization of deep GCNs are influenced by certain key factors, such as the maximum absolute eigenvalue of the graph filter operators and the depth of the network. Our theoretical studies contribute to a deeper understanding of the stability and generalization properties of deep GCNs, potentially paving the way for developing more reliable and well-performing models.

Topics & Concepts

GeneralizationStability (learning theory)Deep learningComputer scienceGraphArtificial intelligenceGraph theoryConvolutional neural networkKey (lock)Bridge (graph theory)Theoretical computer scienceEigenvalues and eigenvectorsMachine learningFilter (signal processing)AlgorithmTask analysisMathematicsPattern recognition (psychology)Data modelingAdvanced Graph Neural NetworksGraph Theory and AlgorithmsComplex Network Analysis Techniques