"OMG! How did it know that?": Reactions to Highly-Personalized Ads

A. Matic, M. Pielot, N. Oliver
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引用次数: 12

Abstract

In this paper, we explore the question "would people be willing to share their personal data in exchange for highly-personalized online ads?" through a Wizard-of-Oz deception study. Our volunteers were exposed via a web browser to three different highly- personalized ads, designed by people who knew them well. They were made believe that the ads had been generated automatically by an Artificial Intelligence engine on the basis of their browsing & location history and/or personal traits. The participants' reactions were surprisingly favorable: in more than 50% of the cases, the ads triggered spontaneous positive emotional reactions; almost 90% of participants would share at least two of the three data sources with advertisers; and about 50% would share all data sources. Our results provide evidence that highly-personalized ads may offset the concerns that people have about sharing their personal data. Thus further efforts in building increasingly personalized online ads would represent a worthwhile endeavour.
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“天啊!它是怎么知道的?:对高度个性化广告的反应
在本文中,我们通过一项《绿野仙踪》的欺骗研究,探讨了“人们是否愿意分享他们的个人数据来换取高度个性化的在线广告?”这一问题。我们的志愿者通过网络浏览器看到三种不同的高度个性化的广告,由熟悉他们的人设计。他们被骗相信这些广告是由人工智能引擎根据他们的浏览和位置历史和/或个人特征自动生成的。参与者的反应出乎意料地好:在超过50%的情况下,广告引发了自发的积极情绪反应;几乎90%的参与者会与广告商共享至少两种数据源;大约50%的人会共享所有的数据源。我们的研究结果证明,高度个性化的广告可能会抵消人们对分享个人数据的担忧。因此,进一步努力建立越来越个性化的在线广告将是一项值得的努力。
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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