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Prediction of drive-by download attacks on Twitter

机译:推特上的偷渡式下载攻击的预测

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摘要

The popularity of Twitter for information discovery, coupled with the automatic shortening of URLs to save space, given the 140 character limit, provides cybercriminals with an opportunity to obfuscate the URL of a malicious Web page within a tweet. Once the URL is obfuscated, the cybercriminal can lure a user to click on it with enticing text and images before carrying out a cyber attack using a malicious Web server. This is known as a drive-by download. In a drive-by download a user's computer system is infected while interacting with the malicious endpoint, often without them being made aware the attack has taken place. An attacker can gain control of the system by exploiting unpatched system vulnerabilities and this form of attack currently represents one of the most common methods employed. In this paper we build a machine learning model using machine activity data and tweet metadata to move beyond post-execution classification of such URLs as malicious, to predict a URL will be malicious with 0.99 F-measure (using 10-fold cross-validation) and 0.833 (using an unseen test set) at 1 s into the interaction with the URL. Thus, providing a basis from which to kill the connection to the server before an attack has completed and proactively blocking and preventing an attack, rather than reacting and repairing at a later date.
机译:鉴于140个字符的限制,Twitter在信息发现方面的普及以及URL的自动缩短以节省空间,给定140个字符的限制,为网络犯罪分子提供了在推文中混淆恶意网页URL的机会。一旦混淆了URL,网络犯罪分子就可以诱使用户单击诱人的文本和图像,然后再使用恶意Web服务器进行网络攻击。这称为路过式下载。在偷渡式下载过程中,用户的计算机系统在与恶意端点进行交互时会被感染,而通常不会使他们知道发生了攻击。攻击者可以通过利用未修补的系统漏洞来控制系统,并且这种攻击形式目前代表着最常用的方法之一。在本文中,我们使用机器活动数据和推文元数据构建了机器学习模型,以超越恶意后这类URL的执行后分类,以0.99 F度量(使用10倍交叉验证)预测一个URL将是恶意的。和0.833(使用看不见的测试集)在1 s内进入与URL的交互。因此,提供了一个基础,可以在攻击完成之前终止与服务器的连接,并主动阻止和阻止攻击,而不是在以后进行反应和修复。

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