一种改进的基于D2GAN的不平衡数据分类过采样算法

Xiaoqiang Zhao, Qi Yao
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引用次数: 0

摘要

针对生成式对抗网络(GAN)对不平衡数据进行过采样时存在模式崩溃、数据生成不可控和重叠率高等问题,提出了一种基于改进对偶判别器生成式对抗网络(D2GAN)的不平衡数据过采样算法。首先,我们将正类属性信息整合到生成器和鉴别器中,保证生成器只生成正类样本的样本,克服了生成器生成数据不可控的问题。其次,在D2GAN中引入分类器对生成样本与原始数据进行判别,避免了生成样本与负类样本的重叠,保证了生成样本的多样性,解决了模式崩溃问题;最后,利用支持向量机和神经网络分类算法在9个数据集上进行过采样实验,对所提算法的性能进行了评价,结果表明所提算法有效地提高了不平衡数据的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved D2GAN‐based oversampling algorithm for imbalanced data classification
To address the problems of pattern collapse, uncontrollable data generation and high overlap rate when generative adversarial network (GAN) oversamples imbalanced data, we propose an imbalanced data oversampling algorithm based on improved dual discriminator generative adversarial nets (D2GAN). First, we integrate the positive class attribute information into the generator and the discriminator to ensure that the generator only generates the samples for positive class samples, which overcomes the problem of uncontrollable data generation by the generator. Second, we introduce a classifier into D2GAN for discriminating the generated samples and the original data, which avoids the overlap among the generated samples and the negative class samples, and ensures the diversity of the generated samples, the problem of pattern collapse is solved. Finally, the performance of the proposed algorithm is evaluated on 9 datasets by using SVM and neural network classification algorithm for oversampling experiments, the results show that the proposed algorithm effectively improve the classification performance of imbalanced data.
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