Efficient Security Framework for Sensitive Data Sharing and Privacy Preserving on Big-Data and Cloud Platforms

P. Pise, Nilesh J. Uke
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引用次数: 9

Abstract

Now day's use of big data platforms is increasing for storing large amount of end user's data remotely on big data servers. Cloud computing storage was widely used for storing user's data, but cloud computing only providing the tasks of data storage but not supporting the important functionalities like computation and database operations. These operations are supported by big data systems and hence currently use of big data platform for storage in increases worldwide by enterprises. Sharing sensitive information and data resulted into big reduction in costs of enterprises for users to provide value added data and personalized services. As enterprises are sharing their important and sensitive information on big data platforms from different and many domains, it becomes necessary to provide the security and privacy in big data platform. Data security and privacy is gaining significant attentions of researchers. There are many security methods already proposed for cloud computing platform, now same methods slowly adopted on big data platform. For Big Data platforms, secure sharing of sensitive data is challenging research problem. In this paper, first we are introducing the different security and privacy preserving methods of cloud computing and big data platforms with their limitations, and then presenting the novel hybrid framework for secure sensitive data sharing and privacy preserving public auditing for shared data over big data systems including functionalities such as privacy preserving, public auditing, data security, storage, data access, deletion or secure data destruction using cloud services.
大数据和云平台敏感数据共享与隐私保护的高效安全框架
如今,大数据平台的使用越来越多,将大量最终用户的数据远程存储在大数据服务器上。云计算存储被广泛用于存储用户的数据,但云计算只提供数据存储的任务,而不支持计算和数据库操作等重要功能。这些操作都是由大数据系统支持的,因此目前使用大数据平台进行存储的企业在全球范围内越来越多。共享敏感信息和数据,大大降低了企业为用户提供数据增值和个性化服务的成本。随着企业在不同领域的大数据平台上共享重要敏感信息,提供大数据平台的安全性和隐私性成为必要。数据安全和隐私问题越来越受到研究者的重视。针对云计算平台已经提出了很多安全方法,现在同样的方法在大数据平台上慢慢被采用。对于大数据平台而言,敏感数据的安全共享是一个具有挑战性的研究问题。在本文中,我们首先介绍了云计算和大数据平台的不同安全和隐私保护方法及其局限性,然后提出了一种新的混合框架,用于安全敏感数据共享和大数据共享数据的隐私保护公共审计,包括隐私保护、公共审计、数据安全、存储、数据访问、删除或使用云服务安全数据销毁等功能。
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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