Graph Neural Network-Driven Hierarchical Mining for Complex Imbalanced Data
Yijiashun Qi, Quanchao Lu, Shiyu Dou, Xiaoxuan Sun, Muqing Li,, Yankaiqi Li

TL;DR
This paper introduces a hierarchical mining framework using graph neural networks to improve analysis of complex, high-dimensional imbalanced data, showing significant performance gains over traditional methods.
Contribution
It presents a novel depth graph model combined with hierarchical strategies for better minority class feature extraction in imbalanced datasets.
Findings
Enhanced minority class feature extraction
Improved pattern discovery metrics
Superior performance in imbalanced data scenarios
Abstract
This study presents a hierarchical mining framework for high-dimensional imbalanced data, leveraging a depth graph model to address the inherent performance limitations of conventional approaches in handling complex, high-dimensional data distributions with imbalanced sample representations. By constructing a structured graph representation of the dataset and integrating graph neural network (GNN) embeddings, the proposed method effectively captures global interdependencies among samples. Furthermore, a hierarchical strategy is employed to enhance the characterization and extraction of minority class feature patterns, thereby facilitating precise and robust imbalanced data mining. Empirical evaluations across multiple experimental scenarios validate the efficacy of the proposed approach, demonstrating substantial improvements over traditional methods in key performance metrics,…
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Taxonomy
TopicsArtificial Intelligence in Healthcare · Data Mining Algorithms and Applications · Data Quality and Management
MethodsGraph Neural Network
