在线广告网络按点击付费流中的点击欺诈检测

Linfeng Zhang, Y. Guan
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引用次数: 154

摘要

随着互联网的快速发展,网络广告在广告市场中扮演着越来越重要的角色。目前广泛使用的在线广告收入模式之一是根据关键词的受欢迎程度和竞争广告商的数量对每次点击收费。这种按点击付费的模式给个人或竞争对手留下了产生虚假点击(即点击欺诈)的空间,这对健康的在线广告市场的发展构成了严重的问题。为了检测点击欺诈,一个重要的问题是检测衰减窗口模型(如跳跃窗口和滑动窗口)上的重复点击。衰减窗口模型在定义和确定点击欺诈方面非常有帮助。然而,尽管有可用的算法来检测重复,但仍然缺乏实用和有效的解决方案来检测衰减窗口模型中按点击付费流中的点击欺诈。在本文中,我们解决了在跳过窗口和滑动窗口的按点击付费流中检测重复点击的问题,并且是第一个提出两种创新算法的人,这两种算法只在点击流中进行一次传递,并且需要更少的内存空间和操作。GBF算法是建立在组布隆过滤器的基础上的,它可以处理具有少量子窗口的跳跃窗口的点击流,而TBF算法是基于一种称为定时布隆过滤器的新数据结构,它可以检测具有大量子窗口的滑动窗口和跳跃窗口的点击欺诈。GBF算法和TBF算法均为零假阴性。此外,理论分析和实验结果表明,我们的算法在检测跨跳跃窗口和滑动窗口的按点击付费流中的重复点击时可以实现低误报率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Click Fraud in Pay-Per-Click Streams of Online Advertising Networks
With the rapid growth of the Internet, online advertisement plays a more and more important role in the advertising market. One of the current and widely used revenue models for online advertising involves charging for each click based on the popularity of keywords and the number of competing advertisers. This pay-per-click model leaves room for individuals or rival companies to generate false clicks (i.e., click fraud), which pose serious problems to the development of healthy online advertising market. To detect click fraud, an important issue is to detect duplicate clicks over decaying window models, such as jumping windows and sliding windows. Decaying window models can be very helpful in defining and determining click fraud. However, although there are available algorithms to detect duplicates, there is still a lack of practical and effective solutions to detect click fraud in pay-per-click streams over decaying window models. In this paper, we address the problem of detecting duplicate clicks in pay-per-click streams over jumping windows and sliding windows, and are the first that propose two innovative algorithms that make only one pass over click streams and require significantly less memory space and operations. GBF algorithm is built on group Bloom filters which can process click streams over jumping windows with small number of sub-windows, while TBF algorithm is based on a new data structure called timing Bloom filter that detects click fraud over sliding windows and jumping windows with large number of sub-windows. Both GBF algorithm and TBF algorithm have zero false negative. Furthermore, both theoretical analysis and experimental results show that our algorithms can achieve low false positive rate when detecting duplicate clicks in pay-per-click streams over jumping windows and sliding windows.
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