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Spam transaction attack detection model based on GRU and WGAN-div

机译:基于GRU和WGAN-DIV的垃圾邮件交易攻击检测模型

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摘要

A Spam Transaction attack is a kind of hostile attack activity specifically targeted against a Cryptocurrency Network. Traditional network intrusion detection methods lack the capability of automatic feature extraction for spam transaction attacks, and thus the detection efficiency is low. Worse still, these kinds of attack methods and the key intrusion behaviour process are usually concealed and submerged into a large number of normal data packages; therefore, the captured threat test samples are too small, which easily leads to insufficient training of detection model, low detection accuracy rate, and high false alarm rate. In this paper, a spam transaction intrusion detection model based on GRU(Gated Recurrent Unit) is proposed, which takes advantage of the excellent features of deep learning and uses repeated and multilevel learning to perform automatic feature extraction for network intrusion behaviour. The model has extremely high learning ability and massive data processing ability. Moreover, it has a quicker and more accurate spam transaction attack detection ability than traditional intrusion detection algorithms. Additionally, a generation method of spam transaction-samples based on WGAN-div is proposed, which obtains new samples by learning training samples and solves the problems of insufficient original samples and unbalanced samples. A series of experiments were performed to verify the proposed models. The proposed models can distinguish between normal and abnormal transaction behaviours with an accuracy reaching to 99.86%. The experimental results indicate that the proposed models in this paper have higher efficiency and accuracy in detecting spam transaction attacks, which provides a novel and better idea for research of spam transaction attack detection systems.
机译:垃圾邮件交易攻击是一种敌对攻击活动,专门针对加密货目网络。传统的网络入侵检测方法缺乏垃圾邮件交易攻击自动特征提取的能力,因此检测效率低。更糟糕的是,这些类型的攻击方法和关键入侵行为过程通常被隐藏并淹没成大量正常数据包;因此,捕获的威胁测试样本太小,这很容易导致检测模型的培训,低检测精度率和高误报率。本文提出了一种基于GRU(门控复发单元)的垃圾邮件事务入侵检测模型,其利用深度学习的优异特征,并使用重复和多级学习来执行网络入侵行为的自动特征提取。该模型具有极高的学习能力和大规模的数据处理能力。此外,它具有比传统的入侵检测算法更快更准确的垃圾邮件交易攻击检测能力。另外,提出了一种基于Wgan-div的垃圾邮件交易 - 样本的发电方法,通过学习培训样本来获得新样本,并解决原始样品不足和不平衡样品的问题。进行一系列实验以验证所提出的模型。所提出的模型可以区分正常和异常的交易行为,精度达到99.86%。实验结果表明,本文所提出的模型在检测垃圾邮件交易攻击方面具有更高的效率和准确性,这为垃圾邮件交易攻击检测系统的研究提供了一种新颖和更好的研究。

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