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More Constructions of Lossy and Correlation-Secure Trapdoor Functions

机译:有损和相关安全的活板门功能的更多构造

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We propose new and improved instantiations of lossy trapdoor functions (Peikert and Waters in STOC'08, pp. 187-196, 2008), and correlation-secure trapdoor functions (Rosen and Segev in TCC'09, LNCS, vol. 5444, pp. 419-436, 2009). Our constructions widen the set of number-theoretic assumptions upon which these primitives can be based, and are summarized as follows: 1.Lossy trapdoor functions based on the quadratic residuosity assumption. Our construction relies on modular squaring, and whereas previous such constructions were based on seemingly stronger assumptions, we present the first construction that is based solely on the quadratic residuosity assumption. We also present a generalization to higher-order power residues. 2.Lossy trapdoor functions based on the composite residuosity assumption. Our construction guarantees essentially any required amount of lossiness, where at the same time the functions are more efficient than the matrix-based approach of Peikert and Waters. 3.Lossy trapdoor functions based on the d-Linear assumption. Our construction both simplifies the DDH-based construction of Peikert and Waters and admits a generalization to the whole family of d-Linear assumptions without any loss of efficiency. 4.Correlation-secure trapdoor functions related to the hardness of syndrome decoding.
机译:我们提出了有损活板门函数的新的和改进的实例化(STOC'08中的Peikert和Waters,第187-196页,2008年),以及相关安全活板门函数(TCC'09中的Rosen和Segev,LNCS,第5444卷,第pp页)。 (419-436,2009)。我们的构造拓宽了这些原语可基于的数论假设集,并总结如下:1.基于二次残差假设的活板活门函数。我们的构造依赖于模平方,而先前的此类构造是基于看似更强的假设,而我们提出的第一个构造仅基于二次残差假设。我们还提出了对高阶功率残差的概括。 2.基于复合残差假设的活板活门函数。我们的结构基本上保证了任何需要的有损量,同时,这些功能比Peikert和Waters的基于矩阵的方法更有效。 3,基于d线性假设的活板活门函数。我们的构造既简化了Peikert和Waters基于DDH的构造,又允许对d-Linear假设的整个系列进行泛化,而不会降低效率。 4.Correlation-secure活板门功能与校验子解码的硬度有关。

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