论文标题

有效的安全动态天际线查询模型

An Efficient Secure Dynamic Skyline Query Model

论文作者

Wang, Weiguo, Li, Hui, Peng, Yanguo, Bhowmick, Sourav S, Chen, Peng, Chen, Xiaofeng, Cui, Jiangtao

论文摘要

现在,将大数据集外包并在云上执行查询是具有成本效益的。但是,在这种情况下,存在严重的安全性和隐私问题,数据集中包含的敏感信息可以泄漏。解决该问题的最有效方法是在外包之前对数据进行加密。然而,有效地处理密码中的查询仍然是一个巨大的挑战。在这项工作中,我们将专注于以安全的方式解决一项代表性查询任务,即动态的天际线查询。但是,由于其动态支配标准需要减法和比较,因此很难在加密数据上执行,这不能有效地由单个加密方案直接支持。为此,我们提出了一个名为Scale的新颖框架。它通过将传统的动态天际线统治转变为纯粹的比较来起作用。整个过程可以通过用户和云之间的单轮交互完成。从理论上讲,我们证明了外包数据库,查询请求和返回的结果在我们的模型下都保密。此外,我们还提出了一种有效的策略,以动态插入和删除存储的记录。对一系列数据集的实证研究表明,与最先进的框架相比,我们的框架将查询处理的效率提高了近三个数量级。

It is now cost-effective to outsource large dataset and perform query over the cloud. However, in this scenario, there exist serious security and privacy issues that sensitive information contained in the dataset can be leaked. The most effective way to address that is to encrypt the data before outsourcing. Nevertheless, it remains a grand challenge to process queries in ciphertext efficiently. In this work, we shall focus on solving one representative query task, namely dynamic skyline query, in a secure manner over the cloud. However, it is difficult to be performed on encrypted data as its dynamic domination criteria require both subtraction and comparison, which cannot be directly supported by a single encryption scheme efficiently. To this end, we present a novel framework called SCALE. It works by transforming traditional dynamic skyline domination into pure comparisons. The whole process can be completed in single-round interaction between user and the cloud. We theoretically prove that the outsourced database, query requests, and returned results are all kept secret under our model. Moreover, we also present an efficient strategy for dynamic insertion and deletion of stored records. Empirical study over a series of datasets demonstrates that our framework improves the efficiency of query processing by nearly three orders of magnitude compared to the state-of-the-art.

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