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Security and Privacy Implications on Database Systems in Big Data Era: A Survey

机译:大数据时代数据库系统的安全和隐私影响:调查

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摘要

For over many decades, relational database model has been considered as the leading model for data storage and management. However, as the Big Data explosion has generated a large volume of data, alternative models like NoSQL and NewSQL have emerged. With the advancement of communication technology, these database systems have given the potential to change the existing architecture from centralized mechanism to distributed in nature, to deploy as cloud-based solutions. Though all of these evolving technologies mostly focus on performance guarantees, it is still being a major concern how these systems can ensure the security and privacy of the information they handle. Different datastores support different types of integrated security mechanisms, however, most of the non-relational database systems have overlooked the security requirements of modern Big Data applications. This paper reviews security implementations in today's leading database models giving more emphasis on security and privacy attributes. A set of standard security mechanisms have been identified and evaluated based on different security classifications. Further, it provides a thorough review and a comprehensive analysis on maturity of security and privacy implementations in these database models along with future directions/enhancements so that data owners can decide on most appropriate datastore for their data-driven Big Data applications.
机译:多十年来,关系数据库模型被认为是数据存储和管理的领先模型。但是,随着大数据爆炸产生了大量数据,出现了NoSQL和NewsQL等替代模型。随着通信技术的进步,这些数据库系统已经有可能将现有架构从集中机制改变为自然分发,以部署为基于云的解决方案。虽然所有这些不断发展的技术主要关注性能保证,但仍然是这些系统如何确保他们处理信息的安全性和隐私的主要担忧。不同的数据存储支持不同类型的集成安全机制,然而,大多数非关系数据库系统都忽略了现代大数据应用的安全要求。本文审查了当今领先的数据库模型中的安全实施,从而更加重视安全和隐私属性。已经基于不同的安全分类来识别和评估一组标准安全机制。此外,它为这些数据库模型中的安全性和隐私实现的成熟度以及未来的方向/增强功能提供了全面的审查和全面分析,以便数据所有者可以决定其数据驱动的大数据应用程序的最合适的数据存储。

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