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A conditional variational autoencoder based self-transferred algorithm for imbalanced classification

机译:基于条件变化自动化的自转移算法,用于不平衡分类

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In this paper, we propose a conditional variational autoencoder-based self-transferred (CVAE_SeTred) algorithm to solve the highly imbalanced classification problem, where the training instances of the minority classes are rare. Our method belongs to an over-sampling technique that utilizes variational autoencoders (VAEs) to generate training samples for the minority classes. Traditional over-sampling methods mainly rely on minority classes themselves, our approach exploits the information from both the majority and minority classes and aims to transfer instructional knowledge from the majority classes to the minority classes, where the majority and minority classes are analogized as the self-transferred (SeTred) source and target domain, respectively. Specifically, our model comprises two encoders, one decoder, and one domain classifier and can simultaneously conduct distribution learning, SeTred learning, image generation, and dataset rebalancing in a joint and unified framework. The proposed method can not only learn domain-invariant and multivariate Gaussian distributed latent variables but also generate discriminative samples for the minority class according to designated labels. We verify the effectiveness of the CVAE_SeTred model on both imbalanced datasets constructed from benchmark datasets and a more challenging real-world industrial application, such as imbalanced classification for fabric defects. Experimental results indicate that our method outperforms other comparative methods and can generate samples with better diversity. (C) 2021 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了一种基于条件变分的自动化器的自转移(CVAE_SETRED)算法来解决高度不平衡的分类问题,其中少数群体的培训实例很少见。我们的方法属于一种过采样技术,该技术利用变形自动化器(VAES)来为少数群体生成培训样本。传统的过抽样方法主要依赖于少数群体课程本身,我们的方法利用了大多数和少数群体课程的信息,并旨在将大多数阶级的教学知识转移到少数阶级,其中多数和少数阶层是一组相似的 - 分别为(设置)源和目标域。具体地,我们的模型包括两个编码器,一个解码器和一个域分类器,并且可以在联合和统一框架中同时进行分发学习,设置学习,图像生成和数据集重新平衡。该提出的方法不仅可以学习领域不变和多变量高斯分布潜伏的变量,而且还根据指定的标签为少数群体类生成鉴别样本。我们验证了CVAE_SETRED模型对由基准数据集构建的两个不平衡数据集以及更具挑战性的现实世界工业应用程序,例如织物缺陷的不平衡分类。实验结果表明,我们的方法优于其他比较方法,可以产生具有更好多样性的样品。 (c)2021 elestvier b.v.保留所有权利。

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