BAMTGAN:表格数据的平衡增强技术

Jueun Jeong, Han-Gyul Jeong, Han-joon Kim
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引用次数: 0

摘要

BAMTGAN是一种新的数据增强技术,它利用改进的DCGAN模型和新的相似度损失来生成多样化和逼真的表格数据,解决了类不平衡问题,防止了模式崩溃。BAMTGAN对每一列进行编码,生成每条记录的特征图,然后将其转换回原始表格形式,即中间图像格式。实验结果表明,与现有的增强方法相比,BAMTGAN在开发高质量预测模型方面提供了更大的改进。Github: https://github.com/uos-dmlab/Structured-Data-Augmentation.git
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BAMTGAN: A Balanced Augmentation Technique for Tabular Data
This paper presents BAMTGAN, a novel data augmentation technique that addresses the class imbalance problem and prevents mode collapse by utilizing a modified DCGAN model and a new similarity loss to generate diverse and realistic tabular data. BAMTGAN encodes each column to produce a feature map for each record, which is then converted back to its original tabular form an intermediate image format. Experimental results demonstrate that BAMTGAN provides a more substantial improvement in developing high-quality predictive models than existing augmentation methods. Github: https://github.com/uos-dmlab/Structured-Data-Augmentation.git
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