A Combined Algorithm for Imbalanced Classification Based on Dual Distribution Representation Learning and Classifier Decoupling Learning

Lin Guo-yuan, Hongyu Liao, Hongxiao Gao, Jianliang Ma
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引用次数: 1

Abstract

Existing classification algorithms for imbalanced datasets adopt data resampling, classes reweighting and other class balancing strategies to strengthen representation ability for minority classes and adjust the classification interface. However, these algorithms weaken the network’s representation ability for majority classes. Therefore, a combined algorithm is proposed based on dual distribution representation learning (DDRL) and classifier decoupling learning (CDL). Here, DDRL preserves the original distribution and samples the balanced distribution from it to guide the learning of dual distribution representation, which enhances minority classes' feature representation ability and retains it for majority classes. CDL decouples the classifier from feature representation network, and trains an MLP classifier with a balanced subset, aiming at adjusting the classification deviation caused by weak features of minority classes. Experimental results show that the proposed algorithm can improve the classification accuracy on class imbalanced datasets effectively.
基于对偶分布表示学习和分类器解耦学习的不平衡分类组合算法
现有的不平衡数据集分类算法采用数据重采样、类重加权等类平衡策略来增强对少数类的表示能力,调整分类接口。然而,这些算法削弱了网络对大多数类的表示能力。为此,提出了一种基于对偶分布表示学习(DDRL)和分类器解耦学习(CDL)的组合算法。在这里,DDRL保留了原有的分布,并从中抽取均衡分布来指导双分布表示的学习,增强了少数类的特征表示能力,保留了多数类的特征表示能力。CDL将分类器与特征表示网络解耦,训练出一个具有平衡子集的MLP分类器,旨在调整少数类弱特征导致的分类偏差。实验结果表明,该算法能有效提高类不平衡数据集的分类精度。
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