Facebook广告库的安全性分析

Laura Edelson, Tobias Lauinger, Damon McCoy
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引用次数: 28

摘要

参与选举虚假信息的行为者正在利用在线广告平台传播政治信息。为了应对这一威胁,在线广告网络已经开始让其平台上的政治广告更加透明,以便第三方能够发现恶意广告商。我们提出了一套方法,并对Facebook的美国广告库进行了安全分析,这是他们的政治广告透明度产品。不幸的是,我们发现有几个弱点使恶意广告商能够避免准确披露其政治广告。我们还提出了一种基于聚类的方法来检测从事未申报协调活动的广告商。我们的聚类方法确定了16个可能不真实的社区,这些社区在政治广告上总共花费了400多万美元。这支持了这样一种观点,即透明度可能是打击虚假信息的一种很有前途的工具。最后,根据我们的研究结果,我们提出了提高Facebook和其他平台广告透明度安全性的建议。
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A Security Analysis of the Facebook Ad Library
Actors engaged in election disinformation are using online advertising platforms to spread political messages. In response to this threat, online advertising networks have started making political advertising on their platforms more transparent in order to enable third parties to detect malicious advertisers. We present a set of methodologies and perform a security analysis of Facebook’s U.S. Ad Library, which is their political advertising transparency product. Unfortunately, we find that there are several weaknesses that enable a malicious advertiser to avoid accurate disclosure of their political ads. We also propose a clustering-based method to detect advertisers engaged in undeclared coordinated activity. Our clustering method identified 16 clusters of likely inauthentic communities that spent a total of over four million dollars on political advertising. This supports the idea that transparency could be a promising tool for combating disinformation. Finally, based on our findings, we make recommendations for improving the security of advertising transparency on Facebook and other platforms.
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