Sumit Kumar Debnath, K. Sakurai, Kunal Dey, Nibedita Kundu
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引用次数: 2
摘要
在隐私保护协议的背景下,私有集交集(Private Set Intersection, PSI)由于其广泛的应用而在近年来的研究中扮演着重要的角色。通常,PSI涉及两个参与者来安全地确定他们各自输入集的交集,而不是超出交集。如今,在PSI的背景下,将数据集存储在云中并将PSI计算委托给外包数据集上的云已成为一种常见的做法,类似于安全云计算。我们把这种外包PSI称为OPSI。本文在DDH (Decisional Diffie-Hellman)假设下,设计了一种新的恶意设置下的OPSI结构,不使用任何随机oracle。特别是,我们的OPSI是第一个在非交互式设置的恶意环境中产生线性复杂性的OPSI。此外,我们采用随机排列将我们的OPSI扩展到其基数变体OPSI- ca。在这种情况下,除了对抗性模型是半诚实的而不是恶意的,所有属性都保持不变。
Secure Outsourced Private Set Intersection with Linear Complexity
In the context of privacy preserving protocols, Private Set Intersection (PSI) plays an important role due to their wide applications in recent research community. In general, PSI involves two participants to securely determine the intersection of their respective input sets, not beyond that. These days, in the context of PSI, it is become a common practice to store datasets in the cloud and delegate PSI computation to the cloud on outsourced datasets, similar to secure cloud computing. We call this outsourced PSI as OPSI. In this paper, we design a new construction of OPSI in malicious setting under the Decisional Diffie-Hellman (DDH) assumption without using any random oracle. In particular, our OPSI is the first that incurs linear complexity in malicious environment with not-interactive setup. Further, we employ a random permutation to extend our OPSI to its cardinality variant OPSI-CA. In this case, all the properties remain unchanged except that the adversarial model is semi-honest instead of malicious.