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Graph Neural Network-based Spectral Filtering Mechanism for Imbalance Classification in Network Digital Twin

Abstract

Graph neural networks are gaining attention in fifth-generation (5G) core network digital twins, which are data-driven complex systems with numerous components. Analyzing these data can be challenging due to rare failure types, leading to imbalanced classification in multiclass settings. Digital twins of 5G networks increasingly employ graph classification as the main method for identifying failure types. However, the skewed distribution of failure occurrences is a significant class-imbalance problem that prevents practical graph data mining. Previous studies have not sufficiently addressed this complex problem. This paper, proposes class-Fourier GNN (CF-GNN) that introduces a class-oriented spectral filtering mechanism to ensure precise classification by estimating a unique spectral filter for each class. This work employs eigenvalue and eigenvector spectral filtering to capture and adapt to variations in minority classes, ensuring accurate class-specific feature discrimination, and adept at graph representation learning for complex local structures among neighbors in an end-to-end setting. The extensive experiments demonstrate that the proposed CF-GNN could help create new techniques for enhancing classifiers and investigate the characteristics of the multiclass imbalanced data in a network digital twin system.

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@article{isah2025_2502.11505,
  title={ Graph Neural Network-based Spectral Filtering Mechanism for Imbalance Classification in Network Digital Twin },
  author={ Abubakar Isah and Ibrahim Aliyu and Sulaiman Muhammad Rashid and Jaehyung Park and Minsoo Hahn and Jinsul Kim },
  journal={arXiv preprint arXiv:2502.11505},
  year={ 2025 }
}
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