基于gan的比特币异常交易检测

Xiaoqi Zhang, Guangsong Li, Yongjuan Wang
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引用次数: 0

摘要

区块链技术自问世以来,一直受到业界和学术界的高度关注。随着其发展,基于区块链技术的比特币等加密货币逐渐出现并进入金融领域。与此同时,针对比特币的恶意行为越来越普遍,对加密货币用户造成了巨大的伤害,区块链技术的发展也促使研究人员建立各种模型来应对这一问题。在本文中,我们收集了历史比特币交易数据集,并从中提取特征。在标准化特征后,我们使用基于生成式对抗网络(GAN)的无监督学习模型来检测包含超过3000万个正常样本和108个恶意样本的数据集,准确率达到23%,召回率接近100%。
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GAN-based Abnormal Transaction Detection in Bitcoin
Since its inception, blockchain technology attracts great attention from the industry and academia. With its development, cryptocurrencies such as bitcoin based on blockchain technology gradually emerge and enter the financial field. Meanwhile, malicious behaviors aimed at bitcoin become more and more common and cause huge damage to cryptocurrency users and the evolution of blockchain technology, which prompt researchers to establish various models to deal with this problem. In this paper, we collected the historical bitcoin transaction dataset and extracted features from it. After standardizing features, we used an unsupervised learning model based on Generative Adversarial Networks (GAN) to detect dataset containing more than 30 million normal and 108 malicious samples and reached a precision of 23% and recall value close to 100%.
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