针对使用非索引文档的可搜索加密的高精度查询恢复攻击

Marc Damie, Florian Hahn, Andreas Peter
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引用次数: 17

摘要

云数据存储解决方案为客户提供经济高效的数据管理。虽然很有吸引力,但数据安全问题仍然是一个核心问题。传统的加密保护存储的文档,但会妨碍关键字搜索等简单功能。因此,提出了可搜索的加密方案,以允许对加密数据进行搜索。高效的模式至少会泄漏访问模式(每个关键字搜索访问的文档),假设攻击者对所存储的文档具有大量的背景知识,那么已知可以在查询恢复攻击中利用这一点。现有的攻击只能通过强大的对手模型获得不错的结果(例如,至少20%的先前已知文档或需要额外的知识,如查询频率),并且它们没有给出评估恢复查询的确定性的指标。这阻碍了它们的实际效用,并质疑它们在现实世界中的相关性。我们提出了一种精炼分数攻击,它可以在不需要存储文档的确切背景知识的情况下实现85%左右的查询恢复率;一个分布相似,但在其他方面不同(即,非索引)的数据集就足够了。攻击从很少的已知查询开始(在我们对不同大小的不同数据集的实验中大约有10个已知查询),然后通过将先前恢复的具有高置信度分数的查询添加到已知查询集,迭代地恢复具有置信度分数的进一步查询。除了高回收率之外,我们的方法在信心得分方面产生了可解释的结果。
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A Highly Accurate Query-Recovery Attack against Searchable Encryption using Non-Indexed Documents
Cloud data storage solutions offer customers cost-effective and reduced data management. While attractive, data security issues remain to be a core concern. Traditional encryption protects stored documents, but hinders simple functionalities such as keyword search. Therefore, searchable encryption schemes have been proposed to allow for the search on encrypted data. Efficient schemes leak at least the access pattern (the accessed documents per keyword search), which is known to be exploitable in query recovery attacks assuming the attacker has a significant amount of background knowledge on the stored documents. Existing attacks can only achieve decent results with strong adversary models (e.g. at least 20% of previously known documents or require additional knowledge such as on query frequencies) and they give no metric to evaluate the certainty of recovered queries. This hampers their practical utility and questions their relevance in the real-world. We propose a refined score attack which achieves query recovery rates of around 85% without requiring exact background knowledge on stored documents; a distributionally similar, but otherwise different (i.e., non-indexed), dataset suffices. The attack starts with very few known queries (around 10 known queries in our experiments over different datasets of varying size) and then iteratively recovers further queries with confidence scores by adding previously recovered queries that had high confidence scores to the set of known queries. Additional to high recovery rates, our approach yields interpretable results in terms of confidence scores.
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