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Private and Secure Distribution of Targeted Advertisements to Mobile Phones

机译:定向安全地向手机分发定向广告

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Online Behavioural Advertising (OBA) enables promotion companies to effectively target users with ads that best satisfy their purchasing needs. This is highly beneficial for both vendors and publishers who are the owners of the advertising platforms, such as websites and app developers, but at the same time creates a serious privacy threat for users who expose their consumer interests. In this paper, we categorize the available ad-distribution methods and identify their limitations in terms of security, privacy, targeting effectiveness and practicality. We contribute our own system, which utilizes opportunistic networking in order to distribute targeted adverts within a social network. We improve upon previous work by eliminating the need for trust among the users (network nodes) while at the same time achieving low memory and bandwidth overhead, which are inherent problems of many opportunistic networks. Our protocol accomplishes this by identifying similarities between the consumer interests of users and then allows them to share access to the same adverts, which need to be downloaded only once. Although the same ads may be viewed by multiple users, privacy is preserved as the users do not learn each other’s advertising interests. An additional contribution is that malicious users cannot alter the ads in order to spread malicious content, and also, they cannot launch impersonation attacks.
机译:在线行为广告(OBA)使促销公司能够以最能满足其购买需求的广告有效地定位用户。这对于作为广告平台所有者的供应商和发布者(例如网站和应用程序开发者)都是非常有益的,但同时也会对暴露其消费者利益的用户造成严重的隐私威胁。在本文中,我们对可用的广告发布方法进行了分类,并从安全性,隐私性,针对性和实用性方面确定了它们的局限性。我们贡献自己的系统,该系统利用机会网络来在社交网络中分发目标广告。我们通过消除用户(网络节点)之间的信任需求而改进了以前的工作,同时实现了低内存和带宽开销,这是许多机会网络固有的问题。我们的协议通过识别用户的消费者兴趣之间的相似性来实现这一点,然后允许他们共享对相同广告的访问权限,这些广告只需下载一次。尽管相同的广告可能会被多个用户查看,但是由于用户之间不会学习彼此的广告兴趣,因此可以保留隐私。另一个贡献是,恶意用户无法更改广告以传播恶意内容,而且他们无法发起模拟攻击。

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