Security with privacy - A research agenda

E. Bertino, B. Samanthula
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引用次数: 4

Abstract

Data is one of the most valuable assets for organization. It can facilitate users or organizations to meet their diverse goals, ranging from scientific advances to business intelligence. Due to the tremendous growth of data, the notion of big data has certainly gained momentum in recent years. Cloud computing is a key technology for storing, managing and analyzing big data. However, such large, complex, and growing data, typically collected from various data sources, such as sensors and social media, can often contain personally identifiable information (PII) and thus the organizations collecting the big data may want to protect their outsourced data from the cloud. In this paper, we survey our research towards development of efficient and effective privacy-enhancing (PE) techniques for management and analysis of big data in cloud computing.We propose our initial approaches to address two important PE applications: (i) privacy-preserving data management and (ii) privacy-preserving data analysis under the cloud environment. Additionally, we point out research issues that still need to be addressed to develop comprehensive solutions to the problem of effective and efficient privacy-preserving use of data.
安全与隐私-一个研究议程
数据是组织最有价值的资产之一。它可以帮助用户或组织实现从科学进步到商业智能的各种目标。由于数据的巨大增长,近年来大数据的概念得到了发展。云计算是存储、管理和分析大数据的关键技术。然而,通常从各种数据源(如传感器和社交媒体)收集的如此庞大、复杂且不断增长的数据通常可能包含个人身份信息(PII),因此收集大数据的组织可能希望保护其外包数据不受云的影响。在本文中,我们概述了我们在开发高效和有效的隐私增强(PE)技术以管理和分析云计算中的大数据方面的研究。我们提出了解决两个重要PE应用的初步方法:(i)保护隐私的数据管理和(ii)云环境下保护隐私的数据分析。此外,我们指出了仍然需要解决的研究问题,以制定有效和高效的数据隐私保护问题的综合解决方案。
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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