Eluding ML-based Adblockers With Actionable Adversarial Examples

Shitong Zhu, Zhongjie Wang, Xun Chen, Shasha Li, Keyu Man, Umar Iqbal, Zhiyun Qian, Kevin S. Chan, S. Krishnamurthy, Zubair Shafiq, Yu Hao, Guoren Li, Zheng Zhang, Xiaochen Zou
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引用次数: 2

Abstract

Online advertisers have been quite successful in circumventing traditional adblockers that rely on manually curated rules to detect ads. As a result, adblockers have started to use machine learning (ML) classifiers for more robust detection and blocking of ads. Among these, AdGraph which leverages rich contextual information to classify ads, is arguably, the state of the art ML-based adblocker. In this paper, we present a4, a tool that intelligently crafts adversarial ads to evade AdGraph. Unlike traditional adversarial examples in the computer vision domain that can perturb any pixels (i.e., unconstrained), adversarial ads generated by a4 are actionable in the sense that they preserve the application semantics of the web page. Through a series of experiments we show that a4 can bypass AdGraph about 81% of the time, which surpasses the state-of-the-art attack by a significant margin of 145.5%, with an overhead of <20% and perturbations that are visually imperceptible in the rendered webpage. We envision that a4’s framework can be used to potentially launch adversarial attacks against other ML-based web applications.
用可操作的对抗性示例避开基于ml的广告拦截器
在线广告客户已经相当成功地绕过了传统的依靠人工策划规则来检测广告的广告拦截器。因此,广告拦截器已经开始使用机器学习(ML)分类器来进行更强大的广告检测和拦截。其中,AdGraph利用丰富的上下文信息来对广告进行分类,可以说是最先进的基于ML的广告拦截器。在本文中,我们提出了a4,一个智能制作对抗广告以逃避AdGraph的工具。与计算机视觉领域的传统对抗性示例不同,a4生成的对抗性广告可以干扰任何像素(即不受约束),在保留网页应用语义的意义上是可操作的。通过一系列实验,我们表明a4可以在81%的时间内绕过AdGraph,这比最先进的攻击高出145.5%,开销<20%,并且在渲染的网页中视觉上难以察觉的扰动。我们设想a4的框架可以用来对其他基于ml的web应用程序发起潜在的对抗性攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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