生成对抗网络在不完全数据分类中的多重输入

Bao Ngoc Vi, Dinh Tan Nguyen, Cao Truong Tran, Huu Phuc Ngo, Chi Cong Nguyen, Hai-Hong Phan
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引用次数: 1

摘要

缺失值是现实世界数据科学中最常见的问题。对缺失值处理不当往往会导致大量误差。因此,缺失值应认真管理分类。近年来,生成对抗网络(GANs)被广泛应用于缺失值的估算。本文提出了一种将GAN和集成学习相结合的多重输入方法来估计分类中的缺失值。我们提出的方法MIGAN利用GAN生成不同的训练观测值,然后使用这些观测值进行集成分类器对缺失数据进行分类。我们在各种数据集上进行了实验,并将MIGAN与最先进的估算方法进行了比较。实验结果显示了显著的结果,表明了MIGAN对缺失数据分类的准确性。
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Multiple Imputation by Generative Adversarial Networks for Classification with Incomplete Data
Missing values present as the most common problem in real-world data science. Inadequate treatment of missing values could often result in mass errors. Hence missing values should be managed conscientiously for classification. Generative Adversarial Networks (GANs) have been applied for imputing missing values in most recent years. This paper proposes a multiple imputation method to estimate missing values for classification through the integration of GAN and ensemble learning. Our propose method MIGAN utilises GAN to generate different training observations which are then used to conduct ensemble classifiers for classification with missing data. We conducted our experiments examine MIGAN on various data sets as well as comparing MIGAN with the state-of-the-art imputation methods. The experimental results show significant results, which highlights the accuracy of MIGAN in classifying the missing data.
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