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Efficient Pseudorandom Correlation Generators: Silent OT Extension and More

机译:高效的伪随机相关发生器:静音OT扩展等

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Secure multiparty computation (MPC) often relies on correlated randomness for better efficiency and simplicity. This is particularly useful for MPC with no honest majority, where input-independent correlated randomness enables a lightweight "non-cryptographic" online phase once the inputs are known. However, since the amount of randomness typically scales with the circuit size of the function being computed, securely generating correlated randomness forms an efficiency bottleneck, involving a large amount of communication and storage. A natural tool for addressing the above limitations is a pseudorandom correlation generator (PCG). A PCG allows two or more parties to securely generate long sources of useful correlated randomness via a local expansion of correlated short seeds and no interaction. PCGs enable MPC with silent preprocessing, where a small amount of interaction used for securely sampling the seeds is followed by silent local generation of correlated pseudorandomness. A concretely efficient PCG for Vector-OLE correlations was recently obtained by Boyle et al. (CCS 2018) based on variants of the learning parity with noise (LPN) assumption over large fields. In this work, we initiate a systematic study of PCGs and present concretely efficient constructions for several types of useful MPC correlations. We obtain the following main contributions: PCG foundations. We give a general security definition for PCGs. Our definition suffices for any MPC protocol satisfying a stronger security requirement that is met by existing protocols. We prove that a stronger security requirement is indeed necessary, and justify our PCG definition by ruling out a stronger and more natural definition. Silent OT extension. We present the first concretely efficient PCG for oblivious transfer correlations. Its security is based on a variant of the binary LPN assumption and any correlation-robust hash function. We expect it to provide a faster alternative to the IKNP OT extension protocol (Crypto 2003) when communication is the bottleneck. We present several applications, including protocols for non-interactive zero-knowledge with bounded-reusable preprocessing from binary LPN, and concretely efficient related-key oblivious pseudorandom functions. PCGs for simple 2-party correlations. We obtain PCGs for several other types of useful 2-party correlations, including (authenticated) one-time truth-tables and Beaver triples. While the latter PCGs are slower than our PCG for OT, they are still practically feasible. These PCGs are based on a host of assumptions and techniques, including specialized homomorphic secret sharing schemes and pseudorandom generators tailored to their structure. Multiparty correlations. We obtain PCGs for multiparty correlations that can be used to make the (input-dependent) online communication of MPC protocols scale linearly with the number of parties, instead of quadratically.
机译:安全的多方计算(MPC)通常依赖于相关的随机性,以实现更好的效率和简便性。这对于没有诚实多数的MPC尤其有用,在这种情况下,一旦输入已知,独立于输入的相关随机性便可以实现轻量级的“非密码”在线阶段。然而,由于随机性的量通常与所计算的函数的电路大小成比例,所以安全地生成相关随机性形成了效率瓶颈,涉及大量的通信和存储。解决上述局限性的自然工具是伪随机相关发生器(PCG)。 PCG允许两个或两个以上的参与者通过相关短种子的本地扩展和不进行交互来安全地生成有用的相关随机性的长源。 PCG使MPC可以进行静默预处理,在该过程中,用于安全采样种子的少量交互操作之后,将静默本地生成相关的伪随机性。 Boyle等人最近获得了一种用于矢量-OLE相关性的切实有效的PCG。 (CCS 2018)是基于在大场域上带有噪声的学习奇偶性(LPN)假设的变体。在这项工作中,我们启动了PCG的系统研究,并针对几种有用的MPC相关性提出了具体有效的构造。我们获得以下主要贡献:PCG基础。我们给出了PCG的一般安全性定义。我们的定义足以满足现有协议所能满足的,更强的安全性要求的任何MPC协议。我们证明了确实需要更强的安全性要求,并通过排除更强和更自然的定义来证明我们的PCG定义是合理的。静音OT扩展。我们提出了第一个具体有效的PCG,用于遗忘的传输相关性。它的安全性基于二进制LPN假设的变体以及任何相关鲁棒性哈希函数。当通信成为瓶颈时,我们希望它为IKNP OT扩展协议(Crypto 2003)提供更快的替代方法。我们提出了几种应用程序,包括用于非交互式零知识的协议,该协议具有从二进制LPN进行有限可重用的预处理,以及具体有效的相关密钥遗忘伪随机函数。 PCG用于简单的两方关联。我们获得了其他几种有用的两方关联的PCG,包括(已认证的)一次性真值表和海狸三元组。尽管后面的PCG比OT的PCG慢,但它们实际上仍然可行。这些PCG基于许多假设和技术,包括专门的同态秘密共享方案和针对其结构量身定制的伪随机生成器。多方关联。我们获得了用于多方关联的PCG,这些PCG可用于使MPC协议的(依赖于输入的)在线通信与方的数量成线性比例,而不是由平方成比例。

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