首页> 外文会议>19th international world wide web conference 2010 >Detection and Analysis of Drive-by-Download Attacks and Malicious JavaScript Code
【24h】

Detection and Analysis of Drive-by-Download Attacks and Malicious JavaScript Code

机译:驱动下载攻击和恶意JavaScript代码的检测和分析

获取原文

摘要

JavaScript is a browser scripting language that allows developers to create sophisticated client-side interfaces for web applications. However, JavaScript code is also used to carry out attacks against the user's browser and its extensions. These attacks usually result in the download of additional malware that takes complete control of the victim's platform, and are, therefore, called "drive-by downloads." Unfortunately, the dynamic nature of the JavaScript language and its tight integration with the browser make it difficult to detect and block malicious JavaScript code.This paper presents a novel approach to the detection and analysis of malicious JavaScript code. Our approach combines anomaly detection with emulation to automatically identify malicious JavaScript code and to support its analysis. We developed a system that uses a number of features and machine-learning techniques to establish the characteristics of normal JavaScript code. Then, during detection, the system is able to identify anomalous JavaScript code by emulating its behavior and comparing it to the established profiles. In addition to identifying malicious code, the system is able to support the analysis of obfuscated code and to generate detection signatures for signature-based systems. The system has been made publicly available and has been used by thousands of analysts.
机译:JavaScript是一种浏览器脚本语言,允许开发人员为Web应用程序创建复杂的客户端接口。但是,JavaScript代码也用于对用户的浏览器及其扩展进行攻击。这些攻击通常导致下载额外的恶意软件,该恶意软件正在完全控制受害者的平台,因此称为“通过下载驾驶”。不幸的是,JavaScript语言的动态性质及其与浏览器的紧密集成使得难以检测和阻止恶意JavaScript代码。 本文介绍了对恶意JavaScript代码的检测和分析的新方法。我们的方法将异常检测与仿真相结合,以自动识别恶意JavaScript代码并支持其分析。我们开发了一个使用许多功能和机器学习技术的系统来建立正常的JavaScript代码的特征。然后,在检测期间,系统能够通过模拟其行为并将其与已建立的简档进行比较来识别异常的JavaScript代码。除了识别恶意代码之外,系统还能支持对混淆代码的分析,并为基于签名的系统生成检测签名。该系统已公开可用,已被数千分析师使用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号