网络广告流中的点击膨胀技术与检测

Ahmed A. Metwally, D. Agrawal, A. E. Abbadi, Qi Zheng
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引用次数: 38

摘要

点击欺诈正在危害互联网广告行业。网络广告对整个互联网的繁荣至关重要,因为它允许生产者为他们的产品做广告,从而有助于电子商务的发展。此外,广告通过支付内容发布者网站的运行费用来支持互联网的智力价值。有些发布商不诚实,利用自动生成流量来欺骗广告商。同样,一些广告商自动点击竞争对手的广告,以耗尽竞争对手的广告预算。在本文中,我们描述了广告网络模型,并讨论了欺诈问题,这是一个不可分割的问题。我们建议在汇总数据上使用在线算法来准确主动地检测自动流量,保护冲浪者的隐私,同时不改变行业模式。我们提供了一个完整的分类命中膨胀技术;并设计检测各种欺诈攻击的流分析技术。我们将某些类的欺诈攻击检测抽象为理论流分析问题,并将其作为开放问题提交给数据管理研究界。概述了在通用架构上部署所提出的检测算法的框架。我们通过一些成功的初步发现来总结我们在真实网络上检测欺诈的尝试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Hit Inflation Techniques and Detection in Streams of Web Advertising Networks
Click fraud is jeopardizing the industry of Internet advertising. Internet advertising is crucial for the thriving of the entire Internet, since it allows producers to advertise their products, and hence contributes to the well being of e-commerce. Moreover, advertising supports the intellectual value of the Internet by covering the running expenses of the content publishers' sites. Some publishers are dishonest, and use automation to generate traffic to defraud the advertisers. Similarly, some advertisers automate clicks on the advertisements of their competitors to deplete their competitors ' advertising budgets. In this paper, we describe the advertising network model, and discuss the issue of fraud that is an integral problem in such setting. We propose using online algorithms on aggregate data to accurately and proactively detect automated traffic, preserve surfers' privacy, while not altering the industry model. We provide a complete classification of the hit inflation techniques; and devise stream analysis techniques that detect a variety of fraud attacks. We abstract detecting the fraud attacks of some classes as theoretical stream analysis problems that we bring to the data management research community as open problems. A framework is outlined for deploying the proposed detection algorithms on a generic architecture. We conclude by some successful preliminary findings of our attempt to detect fraud on a real network.
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