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A privacy preservation model for big data in map-reduced framework based on k-anonymisation and swarm-based algorithms

机译:基于k匿名化和基于群体算法的地图精简框架中的大数据隐私保护模型

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摘要

In recent years, two mainstream technologies have become the centre of IT world, big data and cloud computing. Both these fields are fundamentally different but used together generally. The big-data deals with huge scales of data however cloud-computing is majorly about the infrastructure. Together these fields are beneficial for enterprises varying from the government sector to social sites, from academic to medical sectors, etc. Thus, it becomes important to safeguard the datasets so that the end-users of data may not access the information delivered by the users. This paper presents a hybrid k-anonymisation model for the map-reduce framework which guarantees the preservation of privacy in the cloud database using the combination of swarm-based algorithms. The proposed model focuses on deriving fitness function which will give high value of privacy and low information loss. The simulation and comparison with other algorithms shows better privacy and utility when working with proposed model.
机译:近年来,大数据和云计算已成为IT世界的中心。这两个字段在本质上是不同的,但通常一起使用。大数据处理海量数据,但是云计算主要涉及基础架构。这些领域在一起对从政府部门到社交网站,从学术界到医学界等各种企业都是有益的。因此,保护​​数据集非常重要,这样数据的最终用户可能无法访问用户提供的信息。 。本文提出了一种用于map-reduce框架的混合k匿名模型,该模型使用基于群的算法来保证在云数据库中保留隐私。提出的模型着重于推导适应度函数,该函数将提供较高的隐私价值和较低的信息丢失率。仿真和与其他算法的比较显示了在使用建议的模型时更好的隐私性和实用性。

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