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首页> 外文期刊>Performance evaluation review >Fighting Under-price DoS Attack in Ethereum with Machine Learning Techniques
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Fighting Under-price DoS Attack in Ethereum with Machine Learning Techniques

机译:在国内与机器学习技术在国内战斗价格攻击

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摘要

Ethereum is one of the most popular cryptocurrency currently and it has been facing security threats and attacks. As a consequence, Ethereum users may experience long periods to validate transactions. Despite the maintenance on the Ethereum mechanisms, there are still indications that it remains susceptible to a sort of attacks. In this work, we analyze the Ethereum network behavior during an under-priced DoS attack, where malicious users try to perform denial-of-service attacks that exploit flaws in the fee mechanism of this cryptocurrency. We propose the application of machine learning techniques and ensemble methods to detect this attack, using the available transaction attributes. The proposals present notable performance as the Decision Tree models, with AUC-ROC, F_β-score and recall larger than 0.94, 0.82, and 0.98, respectively.
机译:Ethereum是目前最受欢迎的加密货币之一,它一直面临安全威胁和攻击。 因此,Etereum用户可能会遇到长期验证交易。 尽管对以太统计机制进行了维护,但仍存在迹象表明它仍然易于某种攻击。 在这项工作中,我们在价格不足的DOS攻击期间分析了Ethereum网络行为,恶意用户试图执行拒绝服务的攻击,该攻击在此加密货币的费用机制中利用缺陷。 我们建议使用可用的事务属性来应用机器学习技术和集合方法来检测此攻击。 提案将显着的性能作为决策树模型,AUC-ROC,F_β-SCONE和召回分别大于0.94,0.82和0.98。

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