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Graph-Based Class-Imbalance Learning With Label Enhancement

Guodong Du, Jia Zhang, Min Jiang, Jinyi Long, Yaojin Lin, Shaozi Li, Kay Chen Tan

2021IEEE Transactions on Neural Networks and Learning Systems63 citationsDOI

Abstract

Class imbalance is a common issue in the community of machine learning and data mining. The class-imbalance distribution can make most classical classification algorithms neglect the significance of the minority class and tend toward the majority class. In this article, we propose a label enhancement method to solve the class-imbalance problem in a graph manner, which estimates the numerical label and trains the inductive model simultaneously. It gives a new perspective on the class-imbalance learning based on the numerical label rather than the original logical label. We also present an iterative optimization algorithm and analyze the computation complexity and its convergence. To demonstrate the superiority of the proposed method, several single-label and multilabel datasets are applied in the experiments. The experimental results show that the proposed method achieves a promising performance and outperforms some state-of-the-art single-label and multilabel class-imbalance learning methods.

Topics & Concepts

Computer scienceClass (philosophy)Machine learningArtificial intelligenceGraphPerspective (graphical)ComputationConvergence (economics)TrainAlgorithmTheoretical computer scienceEconomicsGeographyEconomic growthCartographyImbalanced Data Classification TechniquesText and Document Classification TechnologiesElectricity Theft Detection Techniques
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