安全多方计算的实用介绍

David E. Evans, V. Kolesnikov, Mike Rosulek
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引用次数: 240

摘要

自20世纪80年代由Andrew Yao引入以来,多方计算已经从一个理论好奇心发展成为构建大规模隐私保护应用程序的重要工具。安全多方计算(MPC)使一组人能够在不泄露任何参与者的私有输入的情况下共同执行计算。参与者同意计算一个函数,然后可以使用MPC协议在不泄露其秘密输入的情况下共同计算该函数的输出。本专著为对构建隐私保护应用程序感兴趣的从业者和想要在该领域工作的研究人员提供了多方计算的介绍。作者介绍了MPC的基础,并描述了目前的艺术状态。我们的目标是让读者了解今天可能发生的事情,以及未来可能发生的事情。它为使用MPC构建应用程序以及开发MPC协议、实现、工具和应用程序提供了一个起点。那些寻求简明易懂的主题介绍,使他们能够快速构建实用系统或进行进一步研究的人会发现这本必读读物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Pragmatic Introduction to Secure Multi-Party Computation
Since its introduction by Andrew Yao in the 1980s, multi-party computation has developed from a theoretical curiosity to an important tool for building large-scale privacy-preserving applications. Secure multi-party computation (MPC) enables a group to jointly perform a computation without disclosing any participant’s private inputs. The participants agree on a function to compute, and then can use an MPC protocol to jointly compute the output of that function on their secret inputs without revealing them. This monograph provides an introduction to multi-party computation for practitioners interested in building privacy-preserving applications and researchers who want to work in the area. The authors introduce the foundations of MPC and describe the current state of the art. The goal is to enable readers to understand what is possible today, and what may be possible in the future. It provides a starting point for building applications using MPC and for developing MPC protocols, implementations, tools, and applications. Those seeking a concise, accessible introduction to the topic which quickly enables them to build practical systems or conduct further research will find this essential reading.
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