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Detection of Drive-by Download Attacks Using Machine Learning Approach

机译:使用机器学习方法检测偷渡式下载攻击

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>Drive-by download refers to attacks that automatically download malwares to user's computer without his knowledge or consent. This type of attack is accomplished by exploiting web browsers and plugins vulnerabilities. The damage may include data leakage leading to financial loss. Traditional antivirus and intrusion detection systems are not efficient against such attacks. Researchers proposed plenty of detection approaches mostly passive blacklisting. However, a few proposed dynamic classification techniques, which suffer from clear shortcomings. In this paper, we propose a novel approach to detect drive-by download infected web pages based on extracted features from their source code. We test 23 different machine learning classifiers using data set of 5435 webpages and based on the detection accuracy we selected the top five to build our detection model. The approach is expected to serve as a base for implementing and developing anti drive-by download programs. We develop a graphical user interface program to allow the end user to examine the URL before visiting the website. The Bagged Trees classifier exhibited the highest accuracy of 90.1% and reported 96.24% true positive and 26.07% false positive rate.
机译:>偷渡式下载是指在用户不知情或未同意的情况下,自动将恶意软件下载到用户计算机的攻击。这种攻击是通过利用Web浏览器和插件漏洞来完成的。损坏可能包括导致经济损失的数据泄漏。传统的防病毒和入侵检测系统无法有效抵抗此类攻击。研究人员提出了许多检测方法,主要是被动黑名单。然而,一些提出的动态分类技术存在明显的缺点。在本文中,我们提出了一种新颖的方法,该方法基于从源代码中提取的功能来检测偷渡式下载受感染网页。我们使用5435个网页的数据集测试了23种不同的机器学习分类器,并根据检测精度选择了前五名来构建检测模型。该方法有望作为实施和开发反偷渡式下载程序的基础。我们开发了一个图形用户界面程序,以允许最终用户在访问网站之前检查URL。袋树分类器的准确率最高,为90.1%,真实阳性率为96.24%,错误阳性率为26.07%。

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