比特币数据增强的生成对抗网络

Francesco Zola, Jan L. Bruse, Xabier Etxeberria Barrio, M. Galar, Raul Orduna Urrutia
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引用次数: 4

摘要

在比特币实体分类中,结果强烈受到真实数据集的制约,特别是在应用监督机器学习方法时。然而,这些基本事实数据集经常受到严重类别不平衡的影响,因为它们通常包含更多关于法律服务(Exchange, Gambling)的信息,而不是关于可能与非法活动相关的服务(Mixer, Service)的信息。类不平衡增加了应用机器学习技术的复杂性,降低了分类结果的质量,特别是对于代表性不足但关键的类。在本文中,我们建议通过使用生成对抗网络(gan)进行比特币数据增强来解决这个问题,因为gan最近在图像分类领域显示出有希望的结果。然而,没有一种“放之四海而皆准”的GAN解决方案适用于所有场景。事实上,设置GAN训练参数是非常重要的,并且严重影响生成的合成数据的质量。因此,我们评估了GAN参数(如优化函数、数据集的大小和所选的批大小)如何影响一个代表性不足的实体类(矿池)的GAN实现,并演示了如何获得“良好”的GAN配置,从而在合成生成的比特币地址数据和真实比特币地址数据之间实现高度相似。据我们所知,这是第一个将gan作为有效工具来生成用于比特币实体分类中数据增强的合成地址数据的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative Adversarial Networks for Bitcoin Data Augmentation
In Bitcoin entity classification, results are strongly conditioned by the ground-truth dataset, especially when applying supervised machine learning approaches. However, these ground-truth datasets are frequently affected by significant class imbalance as generally they contain much more information regarding legal services (Exchange, Gambling), than regarding services that may be related to illicit activities (Mixer, Service). Class imbalance increases the complexity of applying machine learning techniques and reduces the quality of classification results, especially for underrepresented, but critical classes.In this paper, we propose to address this problem by using Generative Adversarial Networks (GANs) for Bitcoin data augmentation as GANs recently have shown promising results in the domain of image classification. However, there is no “one-fits-all” GAN solution that works for every scenario. In fact, setting GAN training parameters is non-trivial and heavily affects the quality of the generated synthetic data. We therefore evaluate how GAN parameters such as the optimization function, the size of the dataset and the chosen batch size affect GAN implementation for one underrepresented entity class (Mining Pool) and demonstrate how a “good” GAN configuration can be obtained that achieves high similarity between synthetically generated and real Bitcoin address data. To the best of our knowledge, this is the first study presenting GANs as a valid tool for generating synthetic address data for data augmentation in Bitcoin entity classification.
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