Understanding and Detecting Mobile Ad Fraud Through the Lens of Invalid Traffic

Suibin Sun, Le Yu, Xiaokuan Zhang, Minhui Xue, Ren Zhou, Haojin Zhu, S. Hao, Xiaodong Lin
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引用次数: 11

Abstract

Along with gaining popularity of Real-Time Bidding (RTB) based programmatic advertising, the click farm based invalid traffic, which leverages massive real smartphones to carry out large-scale ad fraud campaigns, is becoming one of the major threats against online advertisement. In this study, we take an initial step towards the detection and large-scale measurement of the click farm based invalid traffic. Our study begins with a measurement on the device's features using a real-world labeled dataset, which reveals a series of features distinguishing the fraudulent devices from the benign ones. Based on these features, we develop EvilHunter, a system for detecting fraudulent devices through ad bid request logs with a focus on clustering fraudulent devices. EvilHunter functions by 1) building a classifier to distinguish fraudulent and benign devices; 2) clustering devices based on app usage patterns; and 3) relabeling devices in clusters through majority voting. EvilHunter demonstrates 97% precision and 95% recall on a real-world labeled dataset. By investigating a super click farm, we reveal several cheating strategies that are commonly adopted by fraudulent clusters. We further reduce the overhead of EvilHunter and discuss how to deploy the optimized EvilHunter in a real-world system. We are in partnership with a leading ad verification company to integrate EvilHunter into their industrial platform.
从无效流量的角度理解和检测移动广告欺诈
随着基于实时竞价(RTB)的程序化广告越来越受欢迎,基于点击场的无效流量利用大量真实智能手机进行大规模广告欺诈活动,正成为网络广告的主要威胁之一。在本研究中,我们对基于无效流量的点击场的检测和大规模测量迈出了第一步。我们的研究从使用真实世界标记数据集对设备特征进行测量开始,该数据集揭示了一系列区分欺诈设备和良性设备的特征。基于这些特征,我们开发了EvilHunter,一个通过广告投标请求日志检测欺诈设备的系统,重点是集群欺诈设备。EvilHunter的功能是1)建立一个分类器来区分欺诈和良性设备;2)基于应用使用模式对设备进行聚类;3)通过多数投票对设备进行集群重新贴标签。EvilHunter在真实世界的标记数据集上展示了97%的准确率和95%的召回率。通过调查一个超级点击农场,我们揭示了欺诈集群通常采用的几种欺骗策略。我们进一步减少了EvilHunter的开销,并讨论了如何在实际系统中部署优化后的EvilHunter。我们正在与一家领先的广告验证公司合作,将EvilHunter整合到他们的工业平台中。
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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