Who to show the ad to? Behavioral targeting in Internet advertising

Wei Xiong, Ziyi Xiong, Tina Tian
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引用次数: 1

Abstract

PurposeThe performance of behavioral targeting (BT) mainly relies on the effectiveness of user classification since advertisers always want to target their advertisements to the most relevant users. In this paper, the authors frame the BT as a user classification problem and describe a machine learning–based approach for solving it.Design/methodology/approachTo perform such a study, two major research questions are investigated: the first question is how to represent a user’s online behavior. A good representation strategy should be able to effectively classify users based on their online activities. The second question is how different representation strategies affect the targeting performance. The authors propose three user behavior representation methods and compare them empirically using the area under the receiver operating characteristic curve (AUC) as a performance measure.FindingsThe experimental results indicate that ad campaign effectiveness can be significantly improved by combining user search queries, clicked URLs and clicked ads as a user profile. In addition, the authors also explore the temporal aspect of user behavior history by investigating the effect of history length on targeting performance. The authors note that an improvement of approximately 6.5% in AUC is achieved when user history is extended from 1 day to 14 days, which is substantial in targeting performance.Originality/valueThis paper confirms the effectiveness of BT on user classification and provides a validation of BT for Internet advertising.
广告给谁看?网络广告中的行为定位
行为定位(BT)的效果主要依赖于用户分类的有效性,因为广告商总是希望将广告定位到最相关的用户。在本文中,作者将BT作为一个用户分类问题,并描述了一种基于机器学习的方法来解决它。设计/方法/方法为了进行这样的研究,调查了两个主要的研究问题:第一个问题是如何表示用户的在线行为。一个好的表示策略应该能够根据用户的在线活动有效地对其进行分类。第二个问题是不同的表示策略如何影响目标性能。作者提出了三种用户行为表示方法,并以接收者工作特征曲线下面积(AUC)作为性能度量进行了实证比较。实验结果表明,将用户搜索查询、点击url和点击广告作为用户配置文件,可以显著提高广告活动的有效性。此外,作者还通过调查历史长度对目标性能的影响,探索了用户行为历史的时间方面。作者指出,当用户历史记录从1天延长到14天时,AUC的改善约为6.5%,这在目标性能方面是实质性的。原创性/价值本文证实了BT在用户分类上的有效性,为互联网广告提供了一种BT的验证。
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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