Secure multi-party computation in differential private data with Data Integrity Protection

S. Sundari, M. Ananthi
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引用次数: 8

Abstract

Secure multiparty computation (SMC) is needed now-a-days in which data are distributed between different parties. Moreover, organizations are wished to collaborate with other parties who conduct same business, for their mutual benefits. SMC provides users to gain much information from the larger data without disclosing the data. This project combines the technique secure multi-party computation and the differential privacy for vertically partitioned data between parties. To achieve this, a multi-party protocol has been proposed for the exponential mechanism. Reliable access to data is must for most computer applications and data servers. Some factors causes unauthorized access to stored data. Two Phase Validation (2PV) provides the authentication for the users, while integrating the data in multiparty computation. Data can get corrupted due to some malfunctions. Disk errors are common today but the storage technologies are not designed to handle such kind of errors. A simple integrity violation is detected by the higher level software which causes further loss of data. The proposed system is to verify the integrity of random subsets of data against general or malicious corruptions through Distributed Data Integrity (DDI) Protection.
基于数据完整性保护的差分私有数据多方计算安全
在数据分布于不同参与方之间的今天,需要安全的多方计算(SMC)。此外,希望各组织与从事相同业务的其他各方合作,以实现相互利益。SMC使用户可以在不泄露数据的情况下从更大的数据中获得更多信息。该方案将安全多方计算技术与各方之间垂直分区数据的差分隐私相结合。为此,针对指数机制提出了一种多方协议。对于大多数计算机应用程序和数据服务器来说,可靠地访问数据是必须的。有些因素会导致对存储数据的未经授权访问。两阶段验证(Two Phase Validation, 2PV)为用户提供身份验证,同时集成多方计算的数据。由于某些故障,数据可能会损坏。磁盘错误现在很常见,但是存储技术并不是为处理这类错误而设计的。一个简单的完整性违反被更高级别的软件检测到,这将导致进一步的数据丢失。提出的系统是通过分布式数据完整性(DDI)保护来验证随机数据子集的完整性,以防止一般或恶意损坏。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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