A Framework for Multi-party Skyline Query Maintaining Privacy and Data Integrity

Dola Das, K. R. Alam, Y. Morimoto
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引用次数: 1

Abstract

Skyline query is well-known to find out the dominant objects from a large number of datasets. While multiple organizations want to analyze their combined dataset, skyline queries can assist in this regard. Maintaining privacy along with the data integrity of participating organizations’ datasets is important because their commercial success depends on the result of these queries. This paper proposes a new framework for the multi-party skyline query that encompasses both privacy and data integrity. To ensure the privacy of participants’ datasets, it adopts commutative encryptions by employing multiple independent entities. To support the data integrity, it combines encrypted unique tags (UTs) with the encrypted datasets of all participants. In addition, to retain the anonymity of participants’ encrypted data from anyone including authorities, it exploits the re-encryption. Although the proposed framework also practices homomorphic encryption, which usually sacrifices the data integrity, here due to the usage of UTs, it is maintained. This paper is a preliminary report of the proposed framework.
维护隐私和数据完整性的多方Skyline查询框架
Skyline查询以从大量数据集中找出主导对象而闻名。当多个组织想要分析他们的组合数据集时,skyline查询可以在这方面提供帮助。维护隐私以及参与组织数据集的数据完整性非常重要,因为他们的商业成功取决于这些查询的结果。本文提出了一个包含隐私和数据完整性的多方天际线查询框架。为了保证参与者数据集的保密性,采用了可交换加密,采用了多个独立实体。为了支持数据完整性,它将加密的唯一标记(ut)与所有参与者的加密数据集结合在一起。此外,为了保持参与者加密数据的匿名性,它利用了重新加密。尽管所提议的框架也采用同态加密,这通常会牺牲数据完整性,但由于使用了ut,因此它得到了维护。本文是拟议框架的初步报告。
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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