Audience selection for on-line brand advertising: privacy-friendly social network targeting

F. Provost, B. Dalessandro, Rod Hook, Xiaohan Zhang, Alan Murray
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引用次数: 151

Abstract

This paper describes and evaluates privacy-friendly methods for extracting quasi-social networks from browser behavior on user-generated content sites, for the purpose of finding good audiences for brand advertising (as opposed to click maximizing, for example). Targeting social-network neighbors resonates well with advertisers, and on-line browsing behavior data counterintuitively can allow the identification of good audiences anonymously. Besides being one of the first papers to our knowledge on data mining for on-line brand advertising, this paper makes several important contributions. We introduce a framework for evaluating brand audiences, in analogy to predictive-modeling holdout evaluation. We introduce methods for extracting quasi-social networks from data on visitations to social networking pages, without collecting any information on the identities of the browsers or the content of the social-network pages. We introduce measures of brand proximity in the network, and show that audiences with high brand proximity indeed show substantially higher brand affinity. Finally, we provide evidence that the quasi-social network embeds a true social network, which along with results from social theory offers one explanation for the increase in brand affinity of the selected audiences.
在线品牌广告受众选择:隐私友好型社交网络定位
本文描述并评估了从用户生成内容网站的浏览器行为中提取准社交网络的隐私友好方法,目的是为品牌广告找到好的受众(例如,与点击最大化相反)。以社交网络邻居为目标能让广告商产生良好的共鸣,而在线浏览行为数据也能让广告商匿名识别出优秀的受众。除了是我们了解在线品牌广告数据挖掘的第一篇论文外,本文还做出了一些重要贡献。我们引入了一个评估品牌受众的框架,类似于预测建模的抵制评估。我们介绍了从访问社交网络页面的数据中提取准社交网络的方法,而不收集有关浏览器身份或社交网络页面内容的任何信息。我们引入了网络中品牌接近度的测量方法,并表明品牌接近度高的受众确实表现出更高的品牌亲和力。最后,我们提供的证据表明,准社会网络嵌入了一个真正的社会网络,这与社会理论的结果一起为所选受众的品牌亲和力增加提供了一种解释。
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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