Gespeichert in:
Bibliographische Detailangaben
Hauptverfasser: Qi, Yijiashun, Lu, Quanchao, Dou, Shiyu, Sun, Xiaoxuan, Li, Muqing, Li, Yankaiqi
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2502.03803
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
_version_ 1866912221946183680
author Qi, Yijiashun
Lu, Quanchao
Dou, Shiyu
Sun, Xiaoxuan
Li, Muqing
Li, Yankaiqi
author_facet Qi, Yijiashun
Lu, Quanchao
Dou, Shiyu
Sun, Xiaoxuan
Li, Muqing
Li, Yankaiqi
contents 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, including pattern discovery count, average support, and minority class coverage. Notably, the method exhibits superior capabilities in minority-class feature extraction and pattern correlation analysis. These findings underscore the potential of depth graph models, in conjunction with hierarchical mining strategies, to significantly enhance the efficiency and accuracy of imbalanced data analysis. This research contributes a novel computational framework for high-dimensional complex data processing and lays the foundation for future extensions to dynamically evolving imbalanced data and multi-modal data applications, thereby expanding the applicability of advanced data mining methodologies to more intricate analytical domains.
format Preprint
id arxiv_https___arxiv_org_abs_2502_03803
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Graph Neural Network-Driven Hierarchical Mining for Complex Imbalanced Data
Qi, Yijiashun
Lu, Quanchao
Dou, Shiyu
Sun, Xiaoxuan
Li, Muqing
Li, Yankaiqi
Machine Learning
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, including pattern discovery count, average support, and minority class coverage. Notably, the method exhibits superior capabilities in minority-class feature extraction and pattern correlation analysis. These findings underscore the potential of depth graph models, in conjunction with hierarchical mining strategies, to significantly enhance the efficiency and accuracy of imbalanced data analysis. This research contributes a novel computational framework for high-dimensional complex data processing and lays the foundation for future extensions to dynamically evolving imbalanced data and multi-modal data applications, thereby expanding the applicability of advanced data mining methodologies to more intricate analytical domains.
title Graph Neural Network-Driven Hierarchical Mining for Complex Imbalanced Data
topic Machine Learning
url https://arxiv.org/abs/2502.03803