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Enhanced Classification Method for Homograph Attack Detection

机译:增强的分类方法进行同学攻击检测

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Internationalized Domain Name (IDN) homograph is a web security attack in which the attackers deceive the computer users about what websites they are accessing by using homologous domain names. Recently, the growth of IDN homograph attack has become a severe problem with a significant probability of criminality like frauds for web users. This paper proposes an enhanced classification method for IDN homograph detection by utilizing the Structural Similarity Index (SSIM). Compared to the existing approach, the experiment results showed that our improved classification method could increase the accuracy from 95.07% to 96.18% and decrease the false positive rate from 3.92% to 3.23%. Moreover, we apply a multi-group-of-classifier method to our model, which can further increase the accuracy of 98.34% with a false positive rate of 3.77%. We also conducted an empirical analysis of the IDN homograph data and the SSIM classification approach's training processes to discuss why our method outperforms the existing method in homograph detection.
机译:国际化域名(IDN)同影是一个Web安全攻击,攻击者欺骗计算机用户通过使用同源域名来访问他们正在访问的网站。最近,IDN同情谱攻击的增长已成为一个严重的问题,犯罪概要,如Web用户的欺诈。本文采用利用结构相似指数(SSIM)提出了一种增强的IDN同性检测的分类方法。与现有的方法相比,实验结果表明,我们改进的分类方法可以将其精度从95.07%提高至96.18%,并将假阳性率降低3.92%至3.23%。此外,我们将多组分类方法应用于我们的模型,这可以进一步提高98.34%的准确度,假阳性率为3.77%。我们还对IDN同性计数据和SSIM分类方法进行了实证分析,讨论了我们的方法优于现有方法在同学检测中的原因。

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