Anonymous Complaint Aggregation for Secure Messaging

Connor Bell, Saba Eskandarian
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Abstract

Private messaging platforms provide strong protection against platform eavesdropping, but malicious users can use privacy as cover for spreading abuse and misinformation. In an attempt to identify the sources of misinformation on private platforms, researchers have proposed mechanisms to trace back the source of a user-reported message (CCS '19,'21). Unfortunately, the threat model considered by initial proposals allowed a single user to compromise the privacy of another user whose legitimate content the reporting user did not like. More recent work has attempted to mitigate this side effect by requiring a threshold number of users to report a message before its origins can be identified (NDSS '22). However, the state of the art scheme requires the introduction of new probabilistic data structures and only achieves a "fuzzy" threshold guarantee. Moreover, false positives, where the source of an unreported message is identified, are possible. This paper introduces a new threshold source tracking technique that allows a private messaging platform, with the cooperation of a third-party moderator, to operate a threshold reporting scheme with exact thresholds and no false positives. Unlike prior work, our techniques require no modification of the message delivery process for a standard source tracking scheme, affecting only the abuse reporting procedure, and do not require tuning of probabilistic data structures.
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匿名投诉汇总,实现安全信息传递
私人信息平台为防止平台窃听提供了强有力的保护,但恶意用户可以利用隐私作为掩护,传播滥用和错误信息。为了识别私人平台上错误信息的来源,研究人员提出了一些机制来追溯用户报告信息的来源(CCS'19,'21)。遗憾的是,最初的建议所考虑的威胁模型允许单个用户损害另一个用户的隐私,而报告用户并不喜欢该用户的合法内容。最近的研究试图通过要求在确定信息来源之前有一定数量的用户报告信息来减轻这种副作用(NDSS'22)。然而,这种先进的方案需要引入新的概率数据结构,而且只能实现 "模糊 "阈值保证。此外,还可能出现误报,即识别出未报告信息的来源。 本文介绍了一种新的阈值来源跟踪技术,它允许私人信息平台在第三方版主的合作下,运行一种具有精确阈值且无误报的阈值报告方案。与之前的工作不同,我们的技术无需修改标准源跟踪方案的消息传递过程,只影响滥用报告程序,也无需调整概率数据结构。
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